Next Article in Journal
Assessing Critical Success Factors for Supply Chain 4.0 Implementation Using a Hybrid MCDM Framework
Next Article in Special Issue
The Effects of Land Use Mix on Urban Vitality: A Systemic Conceptualization and Mechanistic Exploration
Previous Article in Journal
Urban Systems Between the Environment, Human Health and Society: An Overview
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

What Kind of Rural Digital Configurations Contribute to High County-Level Economic Growth? A Study Conducted in China’s Digital Village Pilot Counties

1
School of Economics and Management, Xiamen University of Technology, Xiamen 361024, China
2
School of Business, Sun Yat-sen University, Guangzhou 510275, China
3
School of Management, Guangzhou University, Guangzhou 510006, China
4
Department of Psychology, Oslo New University College, 0454 Oslo, Norway
*
Author to whom correspondence should be addressed.
Systems 2025, 13(6), 488; https://doi.org/10.3390/systems13060488
Submission received: 30 April 2025 / Revised: 3 June 2025 / Accepted: 11 June 2025 / Published: 18 June 2025

Abstract

The digitalization of rural areas has emerged as a crucial strategy for promoting economic development, yet the phenomenon of “digital suspension” poses a challenge, where the lack of digital integration in certain sectors may hinder economic progress. This study delves into this issue by identifying multiple configurations that drive county-level economic growth. More specifically, this study aims to explore how rural digitalization contributes to county-level economic growth through different combinations of environmental and subject-level factors. To address this issue, this study applies the fuzzy-set qualitative comparative analysis method, guided by systems thinking and ecological systems theory. The analysis is based on 89 case samples selected from China’s digital village pilot counties, using data from the China County-level Digital Rural Index Research Report jointly released by Peking University and Ali Research Institute, published in 2022, and other county-level statistical data. The study explores the complex causal mechanisms and configuration paths through which rural digitalization empowers county-level economic growth. This study found that (1) the conditions necessary to generate high county-level economic growth do not exist in the process of rural digitalization (at least not within the digital village pilot); (2) four configurations facilitate high county-level economic growth: digital governance-led configuration, dual promotion of digital governance and digital infrastructure, dual promotion of digital life and digital infrastructure, and dual promotion of digital life and digital economy; and (3) two configurations yield non-high county-level economic growth and exhibit asymmetrical relationships with those configurations conducive to high growth. These research findings not only broaden the application of systems thinking and ecological systems theory in the realm of rural digitalization but also offer practical insights into strategies for enhancing county-level economic growth.

1. Introduction

As the basic unit of rural revitalization in China, the county level is known as the “rice bag” and “vegetable basket” of China’s development and is the main carrier of agricultural production and industrial manufacturing, playing a key role in the process of integrating towns and villages [1]. Counties are primarily composed of townships (which are generally responsible for the administration of several surrounding administrative villages) and rural areas, and they hold a pivotal position in terms of land area, the total number of households and permanent residents, and the proportion of the county’s economic aggregate in the national economic aggregate. The economic development of counties therefore has a bearing on the national economy and people’s livelihoods and an important impact on the country’s economic development [1,2]. However, compared to cities or urban areas, county-level economic development faces many challenges. The vast rural and township areas under the “urban–rural” dichotomy are characterized by “thin institutions”, poor infrastructure [3,4], and a complex institutional environment [5], with a large outflow of young labor [6] and a relative lack of knowledge, skills, and wealth resources among local workers [7]. These factors have long hindered business innovation and development at the county-level and contributed to the vulnerability of the county-level economy.
In recent years rural digitalization has opened up new opportunities for county-level economic development. Rural digitalization generally refers to the application of digital technologies in rural areas, centered on big data and internet technologies [8]. As a framework concept, it usually encompasses the modernization of agriculture and rural areas, the digital literacy of farmers, and the endogenous dynamics of rural development [9]. In 2018 China proposed the implementation of a digital countryside strategy in the central government’s No. 1 document (which generally focuses on agriculture, rural areas, and farmers) [10]. Since then, the Chinese government has issued a series of planning and support documents. For example, the Ministry of Agriculture and Rural Affairs (2020) and other departments jointly issued a plan for the development of digital agriculture in rural areas (2019–2025) [11]. With the joint efforts of the government and all sectors of society, China’s digital village construction has achieved certain results. For example, the national digital village development level reached 39.1 per cent in 2021, indicating that new modes of the rural digital economy, such as rural logistics, rural e-commerce, and rural digital-inclusive financial services, have emerged and become well established [12].
Rural digitalization is also of great interest to researchers, who have examined topics such as the impact of the digital economy on rural–urban income inequality [13], digital inequalities faced by remote rural household enterprises [14], the mechanism of digital platforms in enhancing rural resilience [15], the endogenous mechanisms of digital economy for empowering rural human settlement [8], the impact of digital economy on rural–urban integration [16], the simulation of agricultural digital economy development and policy support system [17], the mechanism of digital rural construction in influencing the high-quality growth of agricultural economy [18], the mechanism of rural digitalization in raising rural households’ income [19], the potential interrelationships between information and communication technologies (ICTs) and rural transformation [20], and the impact of digital countryside construction on industrial upgrading in counties [2]. However, research on rural digitalization and county-level economic growth (CEG) has received little scholarly attention. In addition, the majority of studies explored the linear relationship between a single antecedent variable and the outcome through empirical [2,8,16] and simulation methods [17], while a few studies qualitatively analyzed the causal mechanism through case study methods [14,15]. None of the above methods consider the possible pathways through which combinations of multiple factors influence outcomes from a combined quantitative and qualitative perspective [21,22]. Indeed, rural digitalization is a multifaceted process of digital convergence. Examples may include rural digital infrastructure construction, smart agriculture construction, the exploration of new modes of digital economy, digital governance effectiveness enhancement, rural cyberculture development, digital benefit services, and smart green village construction [12]. The conclusion that digital technology fuels rural development has been confirmed by many scholars [2,18,23]. It is clear that an approach that considers a combination of rural digitalization factors that affect county-level economic growth is more relevant to the current state of development.
This study therefore aims to address the following questions:
RQ1: How does rural digitalization affect county-level economic growth?
RQ2: What are the various combinations of factors influencing county-level economic growth?
RQ3: Which pathways can more efficiently promote county-level economic growth, which configuration paths constrain county-level economic growth, and what connections exist between these opposing pathways?
Specifically, this study employs a fuzzy-set qualitative comparative analysis (fsQCA) method to analyze the aforementioned questions, aiming to reveal the complex causal impact mechanisms of various combinations of factors on county-level economic development in the context of rural digitalization. It seeks to clarify the possible matching pathways and address the limitations of existing research and methods. Building upon ecological systems theory [24,25], we investigate the relationships between different configurations of antecedent and outcome variables from both the subject and environmental aspects. Through this investigation, we aim to uncover the causal and complex mechanisms and configuration paths through which rural digitalization empowers county-level growth. The environmental aspect encompasses two factors: rural digital infrastructure and rural economic digitalization. The subject participation aspect includes two antecedent variables: rural life digitalization and rural governance digitalization. The four antecedent variables selected in this study meet the configuration requirement of 4–7 conditions in the qualitative comparative analysis (QCA) method [21,22]. In fact, the QCA method does not advocate exhaustively considering all relevant antecedent variables; instead, using this method, researchers should identify the consistency of the important variables under the proposed theoretical model through an in-depth analysis of case data, and then analyze the underlying causes leading to the observed phenomena [21].
This article contributes to the study of digital rural areas by identifying four configuration pathways leading to high county-level economic growth in particular, as well as two potential pathways leading to not-high1 county-level economic growth. The findings of this study contribute new theoretical insights for the development and enhancement of county-level economies under the current trend of rural digitalization. Additionally, this study extends the application of systems thinking and ecological systems theory to a wider range of phenomena. Our research has implications for stakeholders involved in the implementation and promotion of rural digitalization. Furthermore, it offers practical recommendations for facilitating the synergistic interaction between “subjects” and “the environment” in providing digital ecosystem services and products.
The remaining sections of this paper are structured as follows: Section 2 reviews the relevant literature; Section 3 elaborates on the theoretical framework; Section 4 introduces the research methodology and describes the preprocessing of the data; Section 5 presents the configuration analysis and reports the research findings; Section 6 discusses the research findings, and presents the theoretical and practical implications; Section 7 summarizes the research conclusions; and Section 8 objectively discusses the research limitations and suggests future research directions.

2. Literature Review

In recent years, rural digitalization has been widely recognized as a crucial strategic approach to promoting coordinated regional development, particularly in large developing countries like China. With the gradual expansion of digital infrastructure in rural areas, the academic community has increasingly focused on its role in bridging the urban-rural divide and stimulating local economic growth. For instance, research has demonstrated that investments in digital infrastructure can elevate the level of rural digitalization, and they can also promote rural entrepreneurship and enhance market accessibility [27]. Furthermore, the catalytic role of digital infrastructure in rural revitalization has also been corroborated [28,29]. However, such studies often rely on macroeconomic indicators or linear regression models, thereby overlooking the specific contextual dependencies and the combinatorial effects among various factors that underpin digital development in different regions.
The significance of digital governance has also been increasingly emphasized in recent research studies. Research indicates that the digital transformation of rural public service systems contributes to enhancing governance efficiency (e.g., by offering more expedient services) [30], as well as improving community satisfaction and the resultant creation of public service value [31]. However, most existing studies are conducted from a top-down, government-led perspective [32], overlooking the notable disparities in institutional capabilities and technological application levels among different county governments. In regions with weaker grassroots governance capabilities, digital platforms may exist in form but be absent in substance, resulting in the failure to truly materialize the effectiveness of “digital governance.”
Apart from the infrastructure and governance dimensions, farmers’ digital participation capabilities are increasingly recognized as a pivotal force driving the endogenous development of rural digitalization. Digital lifestyle applications such as mobile payments, unmanned supermarkets, intelligent health stations, and rural e-commerce play a crucial role in activating the economic potential of rural areas [33]. However, studies often assume that farmers possess adequate digital literacy or willingness to participate, while overlooking practical issues such as “digital exclusion,” intergenerational differences, and cultural conservatism that may hinder farmers’ effective engagement in digital life [34]. The rise of the digital economy has also sparked academic interest in topics such as digital transformation and rural industrial upgrading [35], as well as digital-inclusive finance and rural digital entrepreneurship [36]. Despite offering opportunities for transformation, the lack of corresponding capacity-building and institutional safeguards may exacerbate farmers’ dependence on digital technologies and the digital economy, along with their livelihood instability.
From a theoretical perspective, the integration of systems thinking and ecological systems theory provides a robust analytical tool for understanding the multi-layered and interactive nature of the rural digitalization process. Systems thinking emphasizes holism, nonlinearity, and the interdependence among system elements [37], making it particularly suitable for analyzing the co-evolution of the digital economy, digital infrastructure, digital governance, and human behavior within the specific context of a particular county. Ecological systems theory, on the other hand, incorporates the influence of environmental factors on individual behavior into a systematic framework through its hierarchical structure of microsystems, mesosystems, exosystems, and macrosystems [24,25]. However, most existing empirical studies remain confined to a single level (e.g., infrastructure investment [27]), with limited efforts to organically integrate the relationship between the macro-policy environment and micro-level behavioral agents, thus constraining their theoretical explanatory power.
In terms of research methodologies, most of the current literature employs empirical and simulation approaches, assuming independent and linear relationships among variables [16,17]. This mode of thinking often struggles to unveil the causal complexity and path diversity inherent in real-world development. In recent years, an increasing number of scholars have begun advocating for the incorporation of configurational methods, such as fsQCA, to identify complex mechanisms such as “equifinal multiple pathways” and “causal asymmetry” [38,39]. However the empirical application of fsQCA in the field of rural digitalization remains relatively limited, and few studies have systematically integrated it with systems thinking or ecological systems theory.
Against this backdrop, the present study comprehensively integrates systems thinking with ecological systems theory, and employs the fsQCA method to explore how environmental and agent-related factors, through different configurations, jointly impact CEG during the process of rural digitalization. This not only broadens the understanding of the diversity in rural digitalization pathways but also offers a valuable theoretical and methodological complement to current rural development research, which predominantly adopts a linear perspective.

3. Theoretical Foundation and Research Framework

3.1. Systems Thinking

Systems thinking is a cognitive framework that helps understand complex phenomena by analyzing the interrelatedness, dynamics, and holism of various elements within a system [40,41]. It emphasizes analyzing issues from a holistic, dynamic, and interactive perspective rather than a fragmented, static, and isolated one. This approach is particularly suitable for studying complex systems characterized by interactions among multiple elements, time-lag effects, feedback loops, and nonlinear relationships [40,41,42].
In fact, the co-evolution of rural digitalization and economic growth embodies the multi-dimensional interactive characteristics of systems thinking. Firstly, within the system framework, digital technology, as a core element flow, restructures the rural economic system through three mechanisms: (1) “structural coupling” (e.g., integrating digital infrastructure with industrial systems), (2) “functional emergence” (e.g., creating new occupational groups via e-commerce platforms), and (3) “feedback regulation” (e.g., data-driven production and transportation decision-making). Secondly, nonlinear associations exist among subsystems. For instance, the expansion of the logistics network (at the hardware level) and the penetration of digital finance (at the service level) form a positive feedback loop, driving exponential improvements in the efficiency of agricultural product circulation. More importantly, systems thinking reveals critical leverage points. When the synergy between digital governance platforms (information hubs) and entrepreneurial entities (organizational carriers) exceeds a certain threshold, it triggers a “system phase transition,” transforming dispersed resources into economies of scale. This dynamic equilibrium process necessitates moving beyond single-element optimization towards a multi-dimensional collaborative model that encompasses rural digital infrastructure, rural economic digitization, rural governance digitization, and rural living service digitization, ultimately achieving resilient growth in the rural economic system.

3.2. Ecological Systems Theory

Bronfenbrenner [43] pioneered ecological systems theory (EST), which employs a lifespan approach to understand how development occurs through the increasingly complex interactions between individuals and their environment [43,44]. From the outset EST garnered significant attention from scholars and has been applied in various interdisciplinary research fields (e.g., education [45] and psychology [46]). Bronfenbrenner’s [43] EST is one of the most widely adopted theoretical frameworks for studying the interaction between subjects and their ecological environments to date [47]. A notable case in the business field is highlighted by Iansiti and Levien [48], who argue Microsoft and Walmart excel in modern commerce due to their positioning within an ecosystem, where the organizations themselves play only a partial role. Thus, the interaction between “individuals (or subjects) and environment” is largely real according to the EST and such interactions have implications for external factors. Although not drawing upon EST directly, researchers in the EU adopted an ecosystem approach in developing the AURORAL ecosystem, a digital services platform designed to meet the needs and contexts of rural areas which focuses on smart communities and rural digital transformation [49]. This provides important insights into the use of ecosystems to analyze rural digitalization in this paper.
We draw upon EST to develop our theoretical framework for three reasons. Firstly, this theory is widely applied in interdisciplinary academic research, possessing the maturity of theoretical application and the advantage of being readily understandable to readers. Secondly, rural digitalization is a process of “subject–environment” interaction and mutual influence. In other words, if there is only investment and construction of external environments such as digital infrastructure, without the interaction and participation of villagers or outsiders (individuals), digital rural development will remain in a “suspended state”, unable to harness the technological efficiency of digitalization, and villagers will also be unable to derive convenience and benefits from it [50]. Therefore, the perspective of “subject–environment” interaction advocated by EST aligns with the level of division of the antecedent variables in the theoretical model of this article. Lastly, the external influence perspective of “subject–environment” interaction advocated by EST aligns with the actual phenomenon of rural digitalization affecting local economic growth [18].

3.3. Model Construction

Both systems thinking and the configurational perspective underscore the principles of holism and dynamism. While systems thinking emphasizes the interplay among constituent elements and the evolution of the system as a whole, the configurational perspective elucidates disparities in outcomes through the specific combinations of these elements, thereby reflecting the inherent complexity of causal relationships. In essence, both paradigms reject linear and isolated modes of analytical inquiry. Therefore, the significant concepts within systems thinking, encompassing the interactions and synergistic relationships among factors, nonlinear relationships, and the dynamic equilibrium of ecosystems (which gives rise to path diversification) [40], have provided intellectual inspiration for this study to explore the causal and complex relationships between digital rural construction and county-level economic growth based on EST.
EST emphasizes the “subject–environment” interaction of various factors that jointly influence a certain external outcome. Similarly, rural digitalization requires, on the one hand, the establishment of digital infrastructure and the improvement of external conditions for digital economic development in traditional and technologically lagging rural areas, aiming to construct a sustainable external environment. On the other hand, it is necessary to encourage, attract, and train local villagers to participate in and use digital facilities, applying digital governance and digital services to daily life [50]. Therefore, in the process of rural digitalization, achieving the prerequisite role of the “subject–environment” interaction is essential to further unleash its role in functional knowledge economy, ultimately driving the growth of county-level economies [15].
Therefore, based on systems thinking and the adoption of EST, this study investigates the relationship between different configurations of four antecedent variables of rural digitalization and county-level economic growth from the “subject–environment” perspective, aiming to uncover the enhancement path of rural digitalization in empowering county-level economic growth. According to the primary indicators of the Chinese County-level Digital Rural Index (2020) research report [51], this study identifies two key elements from the environmental aspect—rural digital infrastructure and rural economic digitalization—and two important factors from the subject aspect—rural life digitalization and rural governance digitalization. This is because rural digital infrastructure and rural economic digitalization mainly reflect the degree of investment and implementation of general technologies, with information, communication, and logistics networks as the core in traditional rural infrastructure and rural economy, while rural life digitalization and rural governance digitalization mainly reflect the coverage of people’s acceptance, participation, and use of digital platforms or tools in daily life and government affairs. The former emphasizes the importance of constructing a rural digital environment, while the latter highlights local residents’ interactive participation in such a rural digital environment. Based on this, we constructed a theoretical mechanism model of rural digitalization in empowering county-level economic growth, as shown in Figure 1.

3.4. Definition of Variables

3.4.1. Environmental Aspect

Rural digital infrastructure typically refers to the basic facilities and technical support needed to provide digital services and management for rural areas, including broadband networks, mobile communications, data centers, digital platforms, and smart terminals [14,52]. Rural digital infrastructure is a key factor in promoting rural economic growth [18], enhancing the efficiency of public services and the level of rural governance [53], strengthening rural community resilience [15,54], and narrowing the urban–rural digital divide [14]. Conversely, inadequate digital infrastructure may hinder the endogenous development capacity of rural areas [55], exacerbating the development risks of falling behind in the digital era [56]. In some developing countries and regions, collaboration between governments and other stakeholders (such as non-governmental organizations, international organizations, and the private sector) to build rural digital infrastructure has become an important approach to promote multifaceted rural development [57].
The concept of rural economic digitalization actually evolved from the term “digital economy” proposed by Tapscott [58]. Rural economic digitalization typically refers to the comprehensive transformation and upgrading of the rural economy through the use of digital technology, informatization, networking, and intelligent means, aiming to enhance the level of rural economic development, optimize industrial structure, strengthen the agricultural industry’s chain coordination, and improve production and living conditions [2,8]. The mechanisms of rural economic digitalization include but are not limited to smart agriculture [59], electronic commerce [60], and digital-inclusive finance [61]. Relevant studies indicate that rural economic digitalization plays a positive role in broadening market channels, improving production efficiency, promoting agricultural industrial upgrading, enhancing logistics supply chains, increasing farmers’ income, and promoting the high-quality and sustainable development of county-level economies [2,18,62,63].

3.4.2. Subject Participation Aspect

Rural life digitalization relies first and foremost on having relatively sound digital infrastructure, a decent level of economic digitalization, and other external conditions. Under the operation modes of digital services, digital production, and digital management, rural life digitalization aims to enable local residents to handle their shopping/consumption, daily affairs, and cultural, tourism, educational, and health-related activities intelligently, easily, and conveniently through digital platforms, applications, mobile internet, and other media [51]. Research indicates that digitalization contributes to improving human settlement areas from three aspects: production, life, and ecology [8]. Furthermore, rural life digitalization helps to expand the scope of rural digital life within limited rural resources, reduce time and space constraints, enhance community participation, improve villagers’ quality of life, narrow the urban–rural life gap, and protect and promote rural natural resources and culture [64,65,66]. However, it cannot be denied that the integration of the external environment and the participation of the subjects need continuous improvement during the process of rural life digitalization [50]. In particular, the experience of vulnerable groups in rural areas should be promoted [67]. For example, it is necessary to provide ongoing digital training and to promote digital technology to the vast rural elderly population in order to enhance their digital literacy and enable them to participate in and enjoy the convenience and benefits brought by digitalization [68].
Rural governance digitalization refers to the process of informatization and networking in rural governance, using digital technologies as modern rural governance means and digital platforms (e.g., e-government platforms) as carriers to enhance villagers’ digital literacy, digital skills, and participation in digital governance [51,69,70]. Scholars have pointed out that the introduction of digital governance requires attention to the humanistic aspect of governance concepts [71]. On the one hand, this emphasizes the importance of people’s participation as “subjects,” while, on the other hand, it implies that rural areas may exhibit “digital divides” and differences in digital literacy and perception among different groups. Especially in governance related to people’s well-being, if the relationship between the “introduction of digital governance” and “subject participation” is not handled well, it may cause concerns among villagers about the security of digital governance, thereby triggering collective “digital exclusion” [58]. Similarly, Misra and Mittal [72] pointed out that clear, transparent, and citizen-friendly rural digital governance creates a more attractive government and brings villagers closer to the government. Rural governance digitalization is expected not only to play a role in promoting rural sustainable development through digital technology but also to indirectly stimulate the development of the social economy [73].

4. Research Methods and Data Analysis

4.1. Methods

Fuzzy-set qualitative comparative analysis (fsQCA), first proposed by Ragin [74], is an asymmetric data analysis technique. On the one hand, it embodies the logical and experiential strength of qualitative methods in handling rich contextual information; on the other hand, it is a quantitative method capable of handling large numbers of cases [74,75]. Unlike correlation-based quantitative methods, fsQCA attempts to identify paths formed by combinations of multiple antecedent variables within a causal logic framework that can lead to the occurrence of the outcomes. In other words, the possible paths leading to the outcomes are diverse, meaning different combinations of the antecedent variables can lead to the same results [26,76]. In recent years, the application of fsQCA in the social sciences has shown a progressively increasing trend [77], especially in areas related to rural digitalization [78,79]. The logical framework of this research method aligns well with the research questions envisaged in this study, namely identifying the causally complex mechanisms through which rural digitalization influences county-level economic growth; exploring the combinations of various factors that influence county-level economic growth; and clarifying the configuration pathways facilitating or constraining county-level economic growth, alongside the connections between these opposing pathways. This strong alignment, together with the fact that fsQCA is a relatively mature application in this disciplinary field, made it logical to employ this method for data analysis.
The fsQCA approach encompasses three core steps: variable calibration, the necessity analysis of single conditions, and the sufficiency analysis of conditional configurations [74,75]. Of these, variable calibration involves transforming raw data into values ranging from 0 to 1, which indicate the degree to which a case belongs to a set under a certain condition. This step serves as the foundation of fsQCA. Necessity analysis of single conditions is employed to determine whether a condition is present in all cases that produce a particular outcome; if it is, then the condition is deemed necessary. Sufficiency analysis of conditional configurations, on the other hand, assesses whether combinations of multiple conditions are sufficient to lead to the occurrence of an outcome. Generally, when these conditions coexist, the outcome tends to manifest as well [74,75]. These three steps follow a sequential order, as illustrated in Figure 2:

4.2. Selection of Cases

This study followed the theoretical sampling principle [80] and selected the pilot areas (county-level) chosen for digital rural development in China in 2020 [81] as the research cases. Among the listed pilot areas, a total of 117 cases are at the county level. Due to missing data, 28 counties were excluded, leaving 89 cases for data analysis. This meets the requirement for the number of cases when the number of antecedent variables is four [75]. The selected cases are representative cases in the context of implementing digital rural development in China, thus meeting the requirement for the typicality of research cases. In addition, the selected case samples cover 28 provincial-level regions of China, spanning across the eastern coastal, central, and western regions, as well as the northern and southern regions. This ensures the selected cases not only meet the requirements for homogeneity and similarity but also exhibit heterogeneous characteristics internally [82]. The geographical distribution of the case samples is detailed in Figure 3. Additionally, the detailed names of the counties have been provided in Table A1 of the appendix.

4.3. Data Sources

The measurement data of the four antecedent variables used in this study were all obtained from the China County-level Digital Rural Index (2020) research report [51], while the measurement data of the outcome variable, CEG speed, were obtained from the China County-level Statistical Yearbook published in 2022 (County-level Volume) [83] and 2021 [84]. Table 1 reports the descriptive statistical results of all the variables used in this paper.

4.4. Variable Measurement

4.4.1. Measurement of Antecedent Variables

The four antecedent variables in this study are all primary indicators from the China County-level Digital Rural Index (2020) research report [51] published in 2022. This research report provides a detailed list of the secondary and tertiary indicators under each primary indicator. Table A2, Appendix shows the measurement indicators for these four antecedent variables. Studies have already used these indicators in academic research on rural digitalization, as the measurement data of the antecedent variables selected in this study possess both matching and feasibility characteristics [85].

4.4.2. Measurement of Outcome Variables

The outcome variable of county-level economic growth was measured using the GDP growth rate from 2020 to 2021 in the sample areas. GDP growth rate has been used by many scholars to measure the economic growth speed of a region [86], providing the reference for this study.

4.5. Calibration of Variable Value

Drawing on previous studies [75,87], this study used the 0.95th percentile, 0.5th percentile, and 0.05th percentile as the calibration anchor points for complete membership, crossover point, and complete non-membership, respectively, to calibrate the data of the variables. This percentile-based calibration approach is commonly used when theoretical thresholds are unavailable and data-driven calibration is necessary. It helps ensure that the calibration reflects the distributional characteristics of the data while avoiding arbitrary cutoffs [74,80]. For not-high outcome variables, we set the calibration anchor points opposite to those of high outcome variables [82]. Furthermore, following the research of [26,88], to prevent case loss, when the calibrated value appeared as 0.5, it was replaced with 0.501. The calibration anchor points for each variable are detailed in Table 2.

5. Research Findings

5.1. Analysis of Necessary Conditions

We analyzed whether the individual antecedent variables constitute the necessary conditions for the outcome variable, as shown in Table 3. The results show that the maximum consistency of the influence of each antecedent variable on the outcome variable is 0.75, with all values being less than 0.9, indicating that each of the four individual antecedent variables has a relatively weak explanatory power for CEG (only when the consistency value is greater than or equal to 0.9 is it considered to show strong explanatory power) [89]. Therefore, we included these four antecedent variables in the subsequent configurational analysis to further analyze the configurations that lead to high CEG.

5.2. Configurational Analysis

When conducting data analysis using the fsQCA 3.0 software, we adopted the parameter setting method proposed by Ding [90] and set the frequency threshold to 1, consistency to be above 0.8, and PRI consistency to be above 0.6. Ultimately, three types of results were obtained: complex solution, parsimonious solution, and intermediate solution. When an antecedent variable appears in both the parsimonious and intermediate solutions, it is marked as a core condition; when an antecedent variable only appears in the intermediate solution, it is marked as a peripheral condition [26]. However, in this study, the computed complex, parsimonious, and intermediate solutions are exactly the same. This occurred because all logically possible configurations of the causal conditions are empirically represented in the data (89 cases cover all 16 (24) possible configurations), resulting in no logical remainders for the algorithm to simplify [80]. In such cases, the Quine–McCluskey algorithm cannot further distinguish between essential and inessential causal paths, and thus the solution is already fully reduced. Therefore, no peripheral conditions are presented in Table 4, and all conditions included in the solution are equally treated. This is similar to the use of intermediate solutions to analyze research findings by Poorkavoos et al. [91]. Thus, we calculated four configurations (S1a, S1b, S2, and S3) that lead to high CEG.
To identify configurations associated with not-high CEG, we used a slightly different PRI consistency threshold (0.5 instead of 0.6). This adjustment was made because the number of cases with not-high CEG was relatively small and unevenly distributed across condition combinations, which made it difficult to identify robust configurations under the more stringent threshold. This practice is consistent with the principle of causal asymmetry in fsQCA, which posits that the causal conditions leading to the presence of an outcome may differ from those leading to its absence [80]. Therefore, different parameter settings can be justified when analyzing positive (high) and negative (not-high) outcomes, particularly under conditions of empirical sparsity [92]. By setting the frequency threshold to 1, consistency to be above 0.8, and PRI consistency to be above 0.5 for computation [75,93], we generated two configurations (NS1 and NS2) that result in not-high CEG, as shown in Table 4. The analysis results indicate that the consistency values of the first four configurations are all above 0.8, demonstrating high consistency [94] and thus constituting sufficient conditions for high CEG. The overall consistency of the configurations resulting in not-high outcomes exceeds 0.8, with a coverage of 0.584, indicating relatively good explanation for the reasons behind the not-high CEG [94].
Based on the case coordinates output by the fsQCA 3.0 software, we plotted the graphical representations of the typical counties corresponding to each configuration, as shown in Figure 4. It can be noticed that the typical counties are concentrated in the upper triangular region of the plots. This indicates the sufficiency of the solutions (configurations) found in this paper [75,91].

5.2.1. Configurations Leading to High CEG

First, there is the digital governance-led type. This configuration (S1a) indicates that high rural governance digitalization and not-high rural economic digitalization are the core conditions that can lead to high CEG. We found that configuration S1a exhibits the characteristics of rural governance digitalization dominance, meaning that in situations where rural economic digitalization is not high and the roles of rural digital infrastructure and rural life digitalization in generating high CEG are unnecessary, high rural governance digitalization can lead to high CEG. Existing studies support the above findings; for example, it has been reported that rural governance digitalization can improve government service efficiency, enhance the rights of rural citizens, and bring government services to the doorstep of citizens, thereby bridging the urban–rural digital divide [95]. The efficiency of government services and the active participation of villagers will further promote local business and market environments [96], thus contributing to the generation of high CEG.
The typical county-level areas with configuration S1a include Hongtong, Yangxi, and Yushan, among others (see Graph A, Figure 4 for details). These counties demonstrate a high level of rural governance digitalization. From a geographical distribution perspective, these typical cases span across the southeastern coastal, central, northeastern, northwestern, and southwestern regions of China. There is therefore no significant regional concentration in geographical distribution. This indicates that the configuration dominated by digital governance possesses strong universality and adaptability in promoting CEG. This finding challenges the widely held view that only the developed eastern coastal regions can successfully drive digital transformation, suggesting that institutional execution capabilities (such as governmental capacity) can compensate for geographical or resource disadvantages, holding the potential to “bridge” the digital divide.
As an example, Yangxi County promotes government openness and information dissemination through platforms such as government portals, WeChat public accounts (12345) (a platform that provides one-stop demand services for enterprises and the public in terms of government counseling, requests for assistance, complaints, and suggestions), and Yuezhengyi (an application that provides instant messaging and government services) [97]. In government services, online processing is given priority. Relying on county and town (street) government service platforms and village (community) public service platforms, the county promotes and extends access to government services using the Internet, self-service terminals, and mobile terminals to the grassroots level, achieving the objectives of proximity, multi-point accessibility, and efficiency. By the end of 2019, the online processing rate of municipal and county-level government service matters reached over 80% [98]. Furthermore, the county has since achieved full coverage of government self-service machines at the village level, allowing residents to quickly complete over 170 services, such as provident fund inquiries, medical insurance inquiries, real estate information inquiries, and agricultural subsidy applications, by simply presenting their ID cards through these machines [99].
Second, there is the dual-promotion type of digital governance and digital infrastructure. This configuration (S1b) indicates that high rural governance digitalization, high rural digital infrastructure, and not-high rural life digitalization are core conditions that can generate high CEG. We found that configuration S1b enables the dual promotion of digital governance and digital infrastructure in promoting CEG; specifically, in situations where the level of rural life digitalization is low and the role of rural economic digitalization in generating high CEG is unnecessary, the combined effect of high rural governance digitalization and high rural digital infrastructure can generate high CEG. From the perspective of single factors, the continuous improvement of rural digital infrastructure provides “hard power” for county-level industrial upgrading and economic growth [14], while the enhancement of rural governance digitalization provides an indirect “soft environment” for CEG [100]. From the perspective of mutual promotion of factors, the continuous improvement of rural digital infrastructure provides more online functions and application scenarios for digital governance, while the enhancement of rural governance digitalization accelerates the demand development and work progress speed of digital infrastructure; under the joint action of the two, it shapes a good “software and hardware environment” for CEG. Furthermore, this software and hardware environment is continuously optimized through villagers’ participation in digital governance, with their demands and applications evolving through feedback.
The typical counties with configuration S1b include Dazu, Rongchang, and Yicheng, among others, as shown in Graph B, Figure 4. These typical cases span across China’s southeastern coastal, central, and southwestern regions. This demonstrates that the “dual-promotion pathway” does not rely on a single geographical condition or regional development level, but rather exhibits significant cross-regional adaptability. It indicates that the combination of digital infrastructure construction and digital governance capabilities constitutes a pathway that can be effective across diverse economic and geographical environments. Furthermore, this configuration is not an isolated example tailored to specific local conditions but rather a successful model that can be replicated and promoted in multiple regions. In other words, despite the disparities in developmental foundations among different regions, with the support of robust digital governance and appropriate infrastructure investments, synergistic effects can be achieved to drive economic growth.
Taking Dazu as an example, in terms of rural digital infrastructure, this area focuses on the construction of ten major characteristic demonstration parks for the agricultural industry and implements demonstration projects of digital agricultural comprehensive services in these characteristic industrial parks, promoting the construction of rural information infrastructure. The district also links the rural industry financial service capabilities of Ant Financial (an inclusive financial services company owned by Alibaba) to its digital rural platform, thereby providing convenient industry loan services for agricultural production and operation entities, and offers digital systems for agricultural production, operation, management, and service applications [101]. In terms of rural governance digitalization, the district is strongly promoting grassroots network social governance, creating a scientific, systematic, and innovative new mode of rural governance digitalization. For example, in important areas such as characteristic industrial bases, rural courtyards, and public places, intelligent cameras are installed, with PC+TV+Xiaoyi butler APP (an app launched by China Telecom for smart home, smart community, and digital village users) as the client; the purpose is to integrate various types of video resources to maximize the elimination of monitoring “blind zones”, to protect the personal and property safety of villagers, and to provide public emergency command, community governance, and other services [102]. Through important means such as digital infrastructure construction and digital governance, new impetus has been added to the economic growth of Dazu.
Third, there is the dual-promotion type of digital life and digital infrastructure. This configuration (S2) indicates that high rural digital infrastructure, high rural life digitalization, and not-high rural governance digitalization are the core conditions that can lead to high CEG. It demonstrates the dual promotion of CEG via rural digital infrastructure and rural life digitalization. Specifically, in situations where rural governance is not highly digitized and economic digitalization alone does not suffice to generate high CEG, the combined effect of the high digitalization of life and infrastructure can achieve this. This finding is consistent with existing research. For instance, Liu [50] argues that unilateral efforts in digital infrastructure construction alone are unlikely to effectively promote rural economic development. It is crucial to extensively train the main subjects in rural digital construction, primarily farmers, to enhance their digital literacy and proficiency in information technology in order to effectively integrate digital services in rural life.
The typical county-level areas with configuration S2 include Jinggangshan and Jinzhai, as shown in Graph C, Figure 4. These two typical cases are located in the central region of China. This finding illustrates that, under certain conditions, even in the absence of systematic digital governance, a robust technological foundation and vibrant digital lifestyle scenarios can also drive CEG. This phenomenon suggests that we should pay attention to the differences and substitutability in the allocation of digital elements across different regions, as different pathways may yield similar output effects under varying contexts.
Taking Jinzhai as an example, in terms of infrastructure construction, the county focuses on information infrastructure, having built 365 5G base stations to achieve full coverage of 4G networks. Simultaneously, 220 beneficial organizations for agricultural, rural, and farmer development’s information have been established, achieving full coverage in administrative villages [103]. In terms of digital life, the county leverages advantages in cloud computing, big data, IoT, AI, and other technologies. It has developed and launched multiple digital life-related application services such as smart healthcare, smart education, smart transportation, and smart tourism, actively promoting these digital services within its jurisdiction. For instance, in the smart tourism scenario, the county uses digital technology to support the development of comprehensive tourism, enabling real-time data access from multiple scenic areas and intelligent monitoring around the clock. Tourists can use their smartphones at anytime and anywhere to inquire about scenic spots, make reservations, or experience virtual reality tours to immerse themselves in the beautiful landscapes of Jinzhai [104]. These measures make life more convenient for residents, allowing them to better enjoy the pleasures of digital life.
Finally, there is the dual-promotion type of digital life and digital economy. This configuration (S3) indicates that high rural economic digitalization, high rural life digitalization, and not-high rural digital infrastructure are the core conditions that can lead to high CEG. It presents the characteristics of the dual promotion of CEG via digital life and digital economy. Specifically, in situations where rural digital infrastructure construction is not highly developed and rural governance digitalization is unnecessary for generating high CEG, the combined effect of the high digitalization of life and economy can achieve this. Existing studies support the aforementioned findings; for instance, research indicates that the digital economy facilitates long-term increases in farmers’ income and serves as a significant driving force for rural economic development [105]. Rural digitalization provides opportunities to narrow the urban–rural digital divide; the construction of digital infrastructure not only facilitates digital life for rural families [106] but also plays a crucial role in promoting rural business activities [107].
The typical county-level areas with configuration S3 include Qushui, Jinxian, and Fuchuan Yaozu, as detailed in Graph D, Figure 4. These three typical cases are located in the central, southern, and southwestern regions of China. This phenomenon indicates that in certain regions, even with an incomplete rural digital infrastructure, counties can still achieve significant economic growth by leveraging vibrant digital lifestyle scenarios and robust digital economic activities. This configuration reveals the functional substitutability and regional embeddedness characteristics of the digital pathway. It also suggests that policymakers, in promoting rural digitalization, should place greater emphasis on cultivating digital application capabilities and economic embedding mechanisms.
Taking Jinxian as an example, in terms of rural economic digitalization, the county has leveraged rural e-commerce as a breakthrough to accelerate the development of rural digital economy. The county has established 164 e-commerce service stations and two county-level rural logistics centers, developed four rural delivery routes, and trained over 10,000 e-commerce personnel, indicating its strong momentum in the development of the e-commerce industry [108]. In terms of rural life digitalization, the county aims to benefit local people by promoting key application scenarios such as smart campuses and smart healthcare, which are continuously being extended into rural areas [109].

5.2.2. Configurations Leading to Not-High CEG

This study also examined configurations leading to not-high CEG and found two such configurations (see Table 4 for details). Configuration NS1 shows that in rural areas where digitalization of economy, life, and governance is lacking, CEG will not be high, regardless of the state of digital infrastructure. Configuration NS2 shows that in rural areas where digital infrastructure, governance digitalization, and life digitalization are all lacking, CEG will not be high regardless of the state of economic digitalization. Furthermore, this study found that configurations NS1 and NS2 exhibit the characteristics of “subject–environment” deficiency in the rural digital ecosystem, where there is a severe lack of rural digitalization-related factors at both the subject and environmental levels, making it difficult for factors within the system to synergize, thus resulting in a “suspended” state of rural digitalization for an extended period and a failure to mobilize subject participation [50], ultimately leading to not-high CEG.

5.2.3. Configuration Comparison Under Systems Thinking

In systems thinking, owing to the nonlinear interactions among elements, the phenomenon of multiple pathways leading to a single outcome frequently arises [40]. For example, system redundancy allows elements to attain equivalent results through diverse pathways. This study compared the four configurations of high CEG and the two configurations of not-high CEG, identifying four substitution relationships. See Figure 5 for details.
By comparing configurations S1a and S1b, it was found that under the condition where rural governance digitalization is a core presence factor, the single factor of “~rural economic digitalization” can be replaced by the combined factor “rural digital infrastructure*~rural life digitalization,” both of which can promote CEG, as shown in Figure 5A. From an ecosystem perspective [43], this indicates a functional substitution among digital elements, wherein infrastructure and governance jointly stabilize the system when economic digitalization is absent.
Second, by comparing configurations S1b and S2, it was found that under the condition where rural digital infrastructure is a core factor, the combined factor of “rural governance digitalization*~rural life digitalization” can be replaced by the combination of “rural life digitalization*~rural governance digitalization,” both of which can promote CEG, as shown in Figure 5B. This illustrates structural compensation, where the relative weight of digital life and governance can flexibly adapt, echoing the ecosystem’s principle of resilience through diversity [15,34].
Meanwhile, by observing configurations S2 and S3, the substitution relationship shown in Figure 5C is derived. Specifically, under the condition where rural life digitalization is a core factor, the combined factor of “rural digital infrastructure*~rural governance digitalization” can be substituted with the combination of “~rural digital infrastructure*rural economic digitalization,” both of which can promote CEG. This highlights the adaptive balance between physical infrastructure and economic capacity [28] in sustaining digital vitality in county-level ecosystems.
Finally, when comparing the NS1 and NS2 configurations of not-high CEG, the substitution relationship is as shown in Figure 5D. Specifically, under the condition where “~rural governance digitalization*~rural life digitalization” are the core factors, these can be substituted with “~rural digital infrastructure” and “~rural economic digitalization”, both of which can generate not-high CEG. This reflects how deficiencies in key subsystems can propagate downward spirals, as suggested by both systemic fragility and ecological imbalance [110].
Overall, these substitution patterns illustrate the configurational diversity underlying rural digitalization of county-level regions. Furthermore, we found that the configurations generating not-high CEG exhibit an asymmetric relationship compared to those generating high CEG. The findings validate that different county-level regions construct and evolve their digital ecosystems according to local constraints and capacities, demonstrating the context-dependent adaptability and path multiplicity emphasized by both systems thinking [40,41] and EST [43,44].

5.3. Robustness Test

Robustness tests were conducted by adjusting the consistency threshold, case frequency, and calibration values for high CEG configurations [111]. In the first test, the consistency threshold for generating high CEG was raised from 0.8 to 0.85, while the case frequency remained at 1, and PRI consistency remained at 0.6; this test resulted in the same configurations as before adjustment, with consistency and coverage similar to those before adjustment. In the second test, the case frequency was adjusted from 1 to 2, while the consistency threshold remained at 0.8, and PRI consistency remained at 0.6, resulting in configurations that were essentially consistent with those before adjustment. In the third test, we decreased the crossover point by 5% while maintaining the consistency threshold at 0.8 and the PRI consistency at 0.6. This test yielded the same configurations as those before the adjustment, with similar levels of consistency and coverage. The detailed results of the three robustness tests can be found in Table 5. Therefore, based on the results of these three robustness tests, the configurations can be considered to be relatively robust.
Additional robustness tests were conducted by adjusting the consistency threshold, case frequency, and calibration values for not-high CEG configurations. Specifically, firstly, we increased the consistency threshold from 0.8 to 0.85 while maintaining all other parameters consistent with the previous settings. As a result, we obtained two not-high configurations, both of which were subsets of the original not-high configurations. The solution consistency and coverage were also similar to those obtained previously. Secondly, we raised the case frequency from 1 to 2 while keeping all other parameters consistent with the previous settings. This test generated the same configurations as those before the adjustment, with identical levels of consistency and coverage. Finally, we decreased the crossover point by 5%, again maintaining all other parameters as before. Ultimately, we obtained a configuration that was a subset of the original result, and both the consistency and coverage of this configuration solution achieved satisfactory levels (with a solution consistency of 0.829 and a solution coverage of 0.453). The detailed results of the robustness test for not-high configurations are presented in Table 6.

6. Discussion

Our research findings support the value of adopting the “subject–environment” interaction perspective from EST in analyzing rural digitalization. We found that factors from both the subject and environmental aspects jointly influence CEG, as shown by configurations S1b, S2, and S3. These findings are in agreement with the existing literature in some aspects, such as digitalization serving as a core factor in enhancing the overall economic development level of urban and rural areas [8,63,112]. However, what sets our study apart is that we explored and found multiple pathways of CEG driven by various combinations of factors from the perspective of configuration. Furthermore, we did not merely consider factors from the perspective of software and hardware infrastructure; we integrated the participatory role of villagers in the digital environment, thereby providing new insights into addressing the issue of suspension of rural digitalization. Based on these findings, we have made potential theoretical contributions and practical implications in several areas.

6.1. Theoretical Implications

First, based on the configurational perspective, we systematically integrated various factors of rural digitalization construction and identified multiple configurations leading to high CEG. Many existing studies explored the impact of single factors such as the digital economy [113] or digital governance [114] on regional economic development, without analyzing the causal relationship from the perspective of multifactorial combination. Our analysis of the complex causal mechanism of rural digitalization in driving CEG, based on a systematic and multifactorial combination perspective rather than a linear or purely qualitative research perspective, allowed us to identify multiple configurations leading to high CEG, namely, S1a, S1b, S2, and S3. These configurations can explain the differentiated impact of the digital development environment in different villages on CEG, reflecting the digital characteristics of different villages. Therefore, this study contributes to current research by identifying diverse rural digitalization configurations for promoting CEG, responding to scholars’ call for adhering to the principle of adapting measures to local conditions in rural and county development [115].
This study also provides new theoretical insights for alleviating or resolving the digital suspension issue in rural areas. China’s rural digitalization is still in its early stages; although some digital infrastructure has been relatively well established, there are still many issues [50]. The majority of farmers are not actively engaged in rural digitalization; certain digital initiatives are not aligned with the digital development needs of agriculture, rural areas, and farmers, and farmers’ digital technology application capabilities need improvement [50]. Moreover, data sharing, coordination, and integration among governments, enterprises, social organizations, and the public are difficult to achieve [116]. From the perspective of “environment–subject” interactive coupling, this study comprehensively considers the integration level of the environment and subject in rural digitalization, revealing potential pathways whereby environmental and subject factors jointly promote high CEG (e.g., S1b, S2, and S3). This study contributes substantially to the literature by providing a theoretical research framework for addressing or alleviating the digital suspension issue in rural digitalization.
Furthermore, our study demonstrates that EST provides a scientifically reasonable framework for analyzing the combination of antecedent variables driving CEG through rural digitalization. EST is commonly employed in fields such as education [44,45], psychology [46], and business [48], and its perspective on “subject–environment” interaction has also been extended to the entrepreneurial domain [117,118]. The application of this theoretical framework in our study enriches the relevant research on rural digitalization and expands its application in this field. This is a key point distinguishing our study from previous research.
Lastly, based on systems thinking, this paper breaks through the traditional linear analytical framework and research paradigm [119]. By revealing the nonlinear coupling mechanism between rural digital elements and county-level economic growth, it provides a new paradigm for research on the resilient growth of county-level economies within the context of digital development.

6.2. Practical Implications

Based on our findings, we identify six practical implications. First, it is possible to enhance the learning and exchange of information among typical rural digitalization cases in different counties. In terms of the mechanism of rural digitalization driving CEG, counties with the same configuration exhibit similarities (e.g., the four county cases in configuration S1b), and cases with different configurations can achieve the same result. This suggests that managers can promote the learning and exchange of rural digitalization construction modes among different counties, drawing from typical cases to borrow their digital construction methods.
Second, in terms of rural digitalization construction planning, the government can consider comprehensively promoting industrial, governance, and service digitalization. This study found that, in the process of rural digitalization construction, factors at the environmental and subject levels need to be balanced and coordinated (e.g., configurations S1b, S2, and S3). Therefore, in the planning of rural digitalization construction, the government can focus on local industrial development advantages and characteristics, strengthen the investment and construction of digital infrastructure, and improve the digitization level of relevant industries. The government can also establish online government service platforms, guide farmers to participate in government affairs online, and improve the level of rural digital governance, as well as focus on the goal of building convenience into rural life, promoting the digitalization of rural life, and improving the level of digital services in rural areas. This will enhance the government’s capability to provide services within the rural digital ecosystem, and boost villagers’ sense of gain from digital services and their digital happiness index.
Third, the government, social organizations, and other entities need to actively guide farmers to participate in rural digitalization activities and encourage them to change their “digital exclusion” mentality. This study found digital factors from the subject aspect play a crucial role in driving CEG (e.g., configurations S1a, S1b, S2, and S3). Therefore, the government and social organizations can organize training activities to enhance farmers’ digital literacy while also enhancing knowledge dissemination about the importance of rural digitalization construction and its positive impact on rural development. These measures aim to promote farmers’ awareness of their subject status in rural digitalization construction.
Fourth, to promote the resilient growth of county-level economies, it is essential to harness the synergy between “subjects” and “the environment” within the digital ecological context by providing digital ecosystem services and products. For instance, social organizations can collaborate with villagers to establish public brands for rural agricultural products, implementing a “one item, one code” certification system through blockchain traceability technology to enhance the premium pricing potential of eco-agricultural products. Additionally, the government, enterprises, and rural communities can jointly develop a rural virtual reality (VR) cloud tourism system that incorporates digital twin models of ancient villages and VR teaching of intangible cultural heritage skills, thereby offering ecosystem services that combine cutting-edge technology with rural characteristics to customers.
Fifth, based on the multiple high configurations identified in this study, it is recommended that the government, when formulating digital policies, implement differentiated, region-specific, and pathway-based categorical guidance policies. Full consideration should be given to the differences among counties in terms of resource endowments, industrial structures, and governance capabilities, in order to identify digital advancement pathways suitable for each region and provide targeted policy and financial support. This approach will help avoid resource misallocation and inefficient development resulting from a “one-size-fits-all” promotion strategy.
Finally, it is recommended to establish a configuration logic-oriented mechanism for evaluating and providing feedback on the digital performance of rural areas within counties. By constructing a dynamic monitoring system, we should not only examine individual inputs but also pay closer attention to the synergistic effects of multiple factors. Combining the typical configuration models identified in this study, the government can conduct categorized and periodic assessments to accurately identify the progress of digital construction and make policy adjustments, thereby enhancing the flexibility and precision of policy implementation.

7. Conclusions

Rural digitalization is not merely a technological spillover from urban areas, but a transformative process that reshapes the economic and social fabric of county-level regions. While it requires continuous investment in digital infrastructure and services, its long-term success also hinges on the active participation of local residents as co-creators and beneficiaries of digital transformation.
Grounded in systems thinking and EST, and employing the configurational fsQCA method, this study provides novel insights into the complex causal pathways through which rural digitalization contributes to CEG. Unlike linear models, our approach reveals that there is no single necessary condition for high CEG, but rather multiple equifinal configurations that can lead to successful outcomes. Specifically, we identify four distinct high-performing configurations:
(1) A digital governance-led pathway;
(2) A dual-promotion pathway of digital governance and digital infrastructure;
(3) A dual-promotion pathway of digital life and digital infrastructure; and
(4) A dual-promotion pathway of digital life and the digital economy.
These configurations reflect diverse yet effective strategies for driving economic development under varying local conditions. Moreover, two contrasting configurations are associated with not-high CEG, affirming the causal asymmetry principle of fsQCA and underscoring the risks of imbalanced or incomplete digital development.
These findings highlight that rural digitalization does not follow a “one-size-fits-all” model. Instead, targeted, path-specific strategies that are tailored to the interplay between environmental and subject-level factors are crucial. When comprehensive digitalization is constrained by local realities, focusing on key driving elements (e.g., governance capacity, infrastructure, digital engagement) can still yield significant gains. This study thus offers both theoretical advancement in understanding rural digital transformation and practical guidance for policymakers seeking adaptive, region-specific strategies to foster sustainable CEG.

8. Limitations and Further Research

We acknowledge some limitations in this study, which future research will need to address. Firstly, the case samples of this study were obtained from China’s pilot counties for digital rural development in 2020, where digital construction was still in its early stages. Therefore, the research results may have stage-specific and regional characteristics, which limit the universality of the research findings. In the future, comparative studies can be conducted based on large case samples from different stages of digital rural development and different counties. Furthermore, conducting separate configurational analyses and comparisons based on geographical regional divisions, using nationwide county-level samples, is also a topic worthy of in-depth exploration. In particular, when data is accessible, it is important to examine the relationship between the effectiveness of digital village construction during its 1.0 and 2.0 phases, post-2021 and after its economic growth. Secondly, while our use of EST as the research framework proved useful, the adoption and application of different theories (e.g., synergy theory and value creation theory) may affect the selection of antecedent variables. Therefore, future research could consider causal relationship studies under different theoretical frameworks. Thirdly, this paper emphasizes the construction of a theoretical model based on the fsQCA method, drawing on systems thinking concepts (e.g., mutual influence and collaborative operation among factors, nonlinear causality relationships, and dynamic balance in ecosystems). In the future, causal analysis and multi-scenario simulation comparisons can be conducted to explore the relationship between digitalization and economic development resilience in different counties, utilizing research methods such as system dynamics models. Fourthly, with the relentless evolution of the QCA methodology, a growing cohort of scholars has increasingly turned to the dynamic QCA approach to elucidate intricate causal mechanisms [120,121]. This trend unequivocally offers a methodological vantage point that warrants meticulous exploration in our forthcoming research pursuits. Lastly, regardless of whether rural digitalization construction is successful, truly achieves the integration and synergy of environment and subject, and positively impacts CEG, the farmers living in these local areas have the most say. Therefore, future research can conduct survey studies based on counties, focusing on the perceptions of local farmers towards rural digitalization construction. This can differentiate from the use of secondary data in this study, providing another perspective to demonstrate the feasibility of the proposed theoretical framework.

Author Contributions

Conceptualization, G.X. and Y.T.; methodology, G.X.; software, G.X.; validation, G.X. and Y.T.; formal analysis, M.L.; resources, G.X.; data curation, G.X.; writing—original draft preparation, G.X.; writing—review and editing, G.X., M.L. and J.B.; visualization, G.X. and Y.T.; supervision, Y.T. and G.X.; project administration, Y.T. and L.H.; funding acquisition, G.X. and L.H. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the National Social Science Foundation of China, grant number 21BGL032.

Data Availability Statement

The raw data supporting the conclusions of this article will be made available by the authors on request.

Acknowledgments

The authors express their gratitude to the editor and anonymous reviewers for their numerous constructive comments and encouragement, which have significantly enhanced our paper. We also wish to thank Jing Tan from Guangzhou University for her invaluable assistance with data collation. Additionally, we are deeply indebted to Guokai Li from Hunan Agricultural University for his contributions to the formal analysis and visualization.

Conflicts of Interest

The authors declare no conflicts of interest.

Appendix A

Table A1. The studied county-level case samples.
Table A1. The studied county-level case samples.
CodeCounty-Level NameProvincesCodeCounty-Level NameProvinces
C1YongqingHebeiC46ZiguiHubei
C2SuningC47Yicheng
C3NanheC48HuayuanHunan
C4XinjiC49Daxiang
C5XiShanxiC50Shaoshan
C6HongtongC51NanxiongGuangdong
C7YunzhouC52Yangxi
C8GaopingC53Gaozhou
C9ToketoNei MongolC54Gongcheng YaozuGuangxi
C10OtogC55Fuchuan Yaozu
C11JalaidC56Pingguo
C12LiaozhongLiaoningC57QionghaiHainan
C13LingyuanC58Chengmai
C14Hengren ManzuC59Changjiang Lizu
C15LishuJilinC60DianjiangChongqing
C16HelongC61Dazu
C17DongliaoC62Rongchang
C18HuananHeilongjiangC63LongchangSichuan
C19WangkuiC64Dayi
C20YianC65Xingwen
C21FengJiangsuC66XifengGuizhou
C22PukouC67Qianxi
C23DonghaiC68Jinsha
C24DeqingZhejiangC69Yuqing
C25CixiC70Shilin YizuYunnan
C26LinanC71Chuxiong
C27ChangfengAnhuiC72Kaiyuan
C28DangshanC73MilinXizang
C29SheC74Qushui
C30JinzhaiC75Bailang
C31ShouningFujianC76DaliShaanxi
C32WuyishanC77Zhashui
C33DatianC78Foping
C34ShanghangC79YumenGansu
C35AnyuanJiangxiC80Gaotai
C36JinxianC81Gaolan
C37JinggangshanC82GuinanQinghai
C38YushanC83Huzhu Tuzu
C39GaoqingShandongC84Maduo
C40FeichengC85Huangyuan
C41HuiminC86YanchiNingxia
C42HaiyangC87Pingluo
C43LingbaoHenanC88KorlaXinjiang
C44XixiaC89Jimunai
C45linying/
Table A2. Measurement indicators of antecedent variables [51].
Table A2. Measurement indicators of antecedent variables [51].
Primary IndicatorSecondary Measurement IndicatorsPrimary IndicatorSecondary Measurement Indicators
Environmental aspectSubject participation aspect
RDI indexInformation infrastructure indexRGD indexGovernance means index
Digital financial infrastructure indexRLD indexDigital consumption index
Digital business landmark indexDigital cultural, tourism, education, and health index
Basic data resource system indexDigital life service index
RED indexDigital production index/
Digital supply chain index
Digital marketing index
Digital finance index

Note

1
Because of the nature of the dataset we follow Fiss [26] in using the terms “high” and “not high” rather than the simpler “high” and “low”.

References

  1. Urban Planning and Design Institute of Finance and Economics. Annual County-level High-Quality Development Index Report. 2022. Available online: https://max.book118.com/html/2023/1115/8051022016006006.shtm (accessed on 26 December 2023).
  2. Si, L.J.; Xin, Y.R. The impact of digital village construction on the upgrading of county-level industries. J. Chongqing Univ. 2024, 30, 1–15. [Google Scholar]
  3. Gao, F. China’s poverty alleviation “miracle” from the perspective of the structural transformation of the urban–rural dual economy. China Political Econ. 2021, 4, 86–109. [Google Scholar] [CrossRef]
  4. Tödtling, F.; Lukas, L.; Christoph, H. Knowledge sourcing and innovation in “Thick” and “Thin” regional innovation systems—Comparing ICT firms in two austrian regions. Eur. Plan. Stud. 2011, 19, 1245–1276. [Google Scholar] [CrossRef]
  5. Van Der Ploeg, J.D.; Renting, H.; Brunori, G.; Knickei, K.; Mannion, J.; Marsden, T.; De Roest, K.; Sevilla-Guzmán, E.; Ventura, F. Rural development: From practices and policies towards theory. Rural 2017, 40, 201–218. [Google Scholar]
  6. Ding, C.; Wang, M.; Guo, Z.; Chen, N. City size, administrative rank, and Rural–Urban migration in China. J. Urban Manag. 2024, 13, 3–15. [Google Scholar] [CrossRef]
  7. Prahalad, C.K. Bottom of the pyramid as a source of breakthrough innovations. J. Prod. Innov. Manag. 2012, 29, 6–12. [Google Scholar] [CrossRef]
  8. Liu, B.; Zhan, J.; Zhang, A. Empowering rural human Settlement: Digital Economy’s path to progress. J. Clean. Prod. 2023, 427, 139243. [Google Scholar] [CrossRef]
  9. Li, T.L. Digital rural construction: Basic concepts, value pursuits, and practical paths. Acad. J. Zhongzhou 2023, 11, 85–92. [Google Scholar]
  10. Xinhua News Agency. Opinions of the Communist Party of China Central Committee and the State Council on Implementing the Rural Revitalization Strategy. Available online: https://www.gov.cn/zhengce/2018-02/04/content_5263807.htm?eqid=ee574c8c0005786e00000004647eda3d (accessed on 28 December 2023).
  11. Ministry of Agriculture and Rural Affairs. Office of the Central Network Security and Informatization Committee of the Ministry of Agriculture and Rural Affairs: Notice on the issuance of the “Digital Agriculture and Rural Development Plan (2019–2025)”. Available online: https://www.cac.gov.cn/2020-01/21/c_1581145429704893.htm?from=timeline&wd=&eqid=9225bb690002ec0e00000004642b80d8 (accessed on 28 December 2023).
  12. Information Center of the Ministry of Agriculture and Rural Affairs. China Digital Rural Development Report. 2022. Available online: https://www.cac.gov.cn/rootimages/uploadimg/1679309718522950/1679309718522950.pdf?eqid=c6f0e12f00055d8a0000000264464aa2&eqid=9e1fdedf0004bc7100000003645a0d51 (accessed on 30 December 2023).
  13. Peng, Z.; Dan, T. Digital dividend or digital divide? Digital economy and urban-rural income inequality in China. Telecommun. Policy 2023, 47, 102616. [Google Scholar] [CrossRef]
  14. Philip, L.; Williams, F. Remote rural home based businesses and digital inequalities: Understanding needs and expectations in a digitally underserved community. J. Rural. Stud. 2019, 68, 306–318. [Google Scholar] [CrossRef]
  15. Singh, N.; Kumar, A.; Dey, K. Unlocking the potential of knowledge economy for rural resilience: The role of digital platforms. J. Rural. Stud. 2023, 104, 103164. [Google Scholar] [CrossRef]
  16. Wang, Y.; Peng, Q.; Jin, C.; Ren, J.; Fu, Y.; Yue, X. Whether the digital economy will successfully encourage the integration of urban and rural development: A case study in China. Chin. J. Popul. Resour. Environ. 2023, 21, 13–25. [Google Scholar] [CrossRef]
  17. Dai, Y. Simulation of agricultural digital economy development and policy support system based on resource sensitivity index. Soft Comput. 2023, 27, 9077–9091. [Google Scholar] [CrossRef]
  18. Lei, Z.K.; Qi, C.J.; Wang, L.K. Can the construction of digital village drive high-quality growth in agricultural economy. J. Huazhong Agric. Univ. 2023, 3, 54–66. [Google Scholar]
  19. Hu, L.; Wu, Q.; Yao, Y.X. The mechanism of digital village construction on the income increase of rural households: Based on the matched data of county-level digital village index and China family panel studies. J. Yunnan Univ. Financ. Econ. 2024, 40, 82–96. [Google Scholar]
  20. Fahmi, F.Z.; Mendrofa, M.J.S. Rural transformation and the development of information and communication technologies: Evidence from Indonesia. Technol. Soc. 2023, 75, 102349. [Google Scholar] [CrossRef]
  21. Du, Y.Z.; Jia, L.D. Configurational Perspective and Qualitative Comparative Analysis (QCA): A New Pathway in Management Studies. J. Manag. World 2017, 06, 155–167. [Google Scholar]
  22. Rihoux, B.; Ragin, C.C. Configurational Comparative Methods: Qualitative Comparative Analysis (QCA) and Related Techniques; Sage: New York, NY, USA, 2009; pp. 1–209. [Google Scholar]
  23. Monda, A.; Feola, R.; Parente, R.; Vesci, M.; Botti, A. Rural development and digital technologies: A collaborative framework for policy-making. Transform. Gov. People Process. Policy 2023, 17, 328–343. [Google Scholar] [CrossRef]
  24. Bronfenbrenner, U. Ecological systems theory. In Encyclopedia of Psychology; Kazdin, A.E., Ed.; Oxford University Press: Oxford, UK, 2000; Volume 3, pp. 129–133. [Google Scholar]
  25. Darling, N. Ecological systems theory: The person in the center of the circles. Res. Hum. Dev. 2007, 4, 203–217. [Google Scholar] [CrossRef]
  26. Fiss, P.C. Building better causal theories: A fuzzy set approach to typologies in organization research. Acad. Manag. J. 2011, 54, 393–420. [Google Scholar] [CrossRef]
  27. Lu, S.; Zhuang, J.; Sun, Z.; Huang, M. How can rural digitalization improve agricultural green total factor productivity: Empirical evidence from counties in China. Heliyon 2024, 10, e35296. [Google Scholar] [CrossRef]
  28. Bi, J. Can rural areas in China be revitalized by digitization? A dual perspective on digital infrastructure and digital finance. Financ. Res. Lett. 2024, 67, 105753. [Google Scholar] [CrossRef]
  29. Liu, J.; Li, F. Rural revitalization driven by digital infrastructure: Mechanisms and empirical verification. J. Digit. Econ. 2024, 3, 103–116. [Google Scholar] [CrossRef]
  30. Rahman, N. Effectiveness of Digital Transformation in Public Services in Bulukumba Regency. J. Ad’ministrare 2024, 11, 27–34. [Google Scholar] [CrossRef]
  31. Hajar, S.; Nur, A.A. Co-creating public value into digital-based public service innovation in the village governance. Otoritas J. Ilmu Pemerintah. 2024, 14, 516–538. [Google Scholar] [CrossRef]
  32. Liu, J.; Zhang, X.; Lin, J.; Li, Y. Beyond government-led or community-based: Exploring the governance structure and operating models for reconstructing China’s hollowed villages. J. Rural. Stud. 2022, 93, 273–286. [Google Scholar] [CrossRef]
  33. Xiong, C.; Wang, Y.; Wu, Z.; Liu, F. What drives the development of digital rural life in China? Heliyon 2024, 10, e39511. [Google Scholar] [CrossRef]
  34. Chen, X.; Cheng, X.; Zhang, T.; Guo, H. How do information and communication technology platforms shape rural e-governance: The case of Zhao-lou Village on the WeCounty platform. Inf. Syst. J. 2025, 35, 545–576. [Google Scholar] [CrossRef]
  35. Lu, Z.; Yang, L.; Gou, D.; Wu, Z. Promotion of Rural Industrial Revitalization through the Development of the Rural Digital Economy. Front. Sustain. Food Syst. 2025, 9, 1598461. [Google Scholar] [CrossRef]
  36. Yu, W.; Wang, L.; Liu, X.; Xie, W.; Zhang, M. Can digital inclusive finance promote high-quality rural entrepreneurship? A county-level analysis from China. Financ. Res. Lett. 2024, 67, 105820. [Google Scholar] [CrossRef]
  37. Cabrera, D.; Laura, C. What is Systems Thinking? Learning, Design, and Technology: An International Compendium of Theory, Research, Practice, and Policy; Springer International Publishing: Cham, Switzerland, 2023; pp. 1495–1522. [Google Scholar]
  38. Ye, J.; Zhang, Y.; Chen, Y.; Zhang, Y. Multiple Paths of Influencing Factors of College Students’ Intention of Returning Home for Employment from the Perspective of Configuration: A fsQCA Approach. Rural. Sociol. 2025, 90, 85–109. [Google Scholar] [CrossRef]
  39. Zou, B.; Sun, X.; Zou, Y.; Tang, Y. Analysis of Driving County Innovation Capability Enhancement: Based on fsQCA. Pol. J. Environ. Stud. 2024. [Google Scholar] [CrossRef]
  40. Monat, J.P.; Gannon, T.F. What is systems thinking? A review of selected literature plus recommendations. Am. J. Syst. Sci. 2015, 4, 11–26. [Google Scholar]
  41. Arnold, R.D.; Wade, J.P. A definition of systems thinking: A systems approach. Procedia Comput. Sci. 2015, 44, 669–678. [Google Scholar] [CrossRef]
  42. Verhoeff, R.P.; Knippels, M.-C.P.J.; Gilissen, M.G.R.; Boersma, K.T. The theoretical nature of systems thinking. Perspectives on systems thinking in biology education. Front. Educ. 2018, 3, 40. [Google Scholar] [CrossRef]
  43. Bronfenbrenner, U. The Ecology of Human Development; Harvard University Press: Cambridge, MA, USA, 1979. [Google Scholar]
  44. Bluteau, P.; Clouder, L.; Cureton, D. Developing interprofessional education online: An ecological systems theory analysis. J. Interprof. Care 2017, 31, 420–428. [Google Scholar] [CrossRef]
  45. Ozaki, C.C.; Olson, A.B.; Johnston-Guerrero, M.P.; Pizzolato, J.E. Understanding persistence using a phenomenological variant of ecological systems theory. Commun. Coll. Rev. 2020, 48, 252–276. [Google Scholar] [CrossRef]
  46. Tanhan, A.; Strack, R.W. Online photovoice to explore and advocate for Muslim biopsychosocial spiritual wellbeing and issues: Ecological systems theory and ally development. Curr. Psychol. 2020, 39, 2010–2025. [Google Scholar] [CrossRef]
  47. Neal, J.W.; Neal, Z.P. Nested or networked? Future directions for ecological systems theory. Soc. Dev. 2013, 22, 722–737. [Google Scholar] [CrossRef]
  48. Iansiti, M.; Levien, R. Strategy as ecology. Harv. Bus. Rev. 2004, 82, 68–78. [Google Scholar]
  49. Gómez-Carmona, O.; Buján-Carballal, D.; Casado-Mansilla, D.; López-De-Ipiña, D.; Cano-Benito, J.; Cimmino, A.; Poveda-Villalón, M.; García-Castro, R.; Almela-Miralles, J.; Apostolidis, D.; et al. Mind the gap: The AURORAL ecosystem for the digital transformation of smart communities and rural areas. Technol. Soc. 2023, 74, 102304. [Google Scholar] [CrossRef]
  50. Liu, S.J. Causes and countermeasures of the suspension of digital village construction. J. China Agric. Univ. 2022, 39, 5–12. [Google Scholar]
  51. Huang, J.K.; Gao, H.B.; Yi, H.M.; Su, L.L.; Zhang, H.Y.; Zuo, C.M.; Wen, X.; Lv, Z.B.; Zhao, N.; Xu, F.; et al. County-level Digital Rural Index (2020) Research Report. Available online: https://www.ccap.pku.edu.cn/nrdi/docs/2022-05/20220530144658673576.pdf (accessed on 8 January 2024).
  52. Gwaka, L.; May, J.; Tucker, W. The Impacts of Digital Infrastructure Transformation on Livestock System Sustainability in Rural Communities. Preprints 2020, 2020060332. [Google Scholar] [CrossRef]
  53. Kosec, K.; Wantchekon, L. Can information improve rural governance and service delivery? World Dev. 2020, 125, 104376. [Google Scholar] [CrossRef]
  54. Malecki, E.J. Digital development in rural areas: Potentials and pitfalls. J. Rural. Stud. 2003, 19, 201–214. [Google Scholar] [CrossRef]
  55. Yang, R.J.; Cao, Y.P. On the tension between rural digital empowerment and digital divide and its resolution. J. Nanjing Agric. Univ. 2021, 21, 31–40. [Google Scholar]
  56. Philip, L.; Cottrill, C.; Farrington, J.; Williams, F.; Ashmore, F. The digital divide: Patterns, policy and scenarios for connecting the ‘final few’ in rural communities across Great Britain. J. Rural. Stud. 2017, 54, 386–398. [Google Scholar] [CrossRef]
  57. Batuo, M.E. The role of telecommunications infrastructure in the regional economic growth of Africa. J. Dev. Areas 2015, 49, 313–330. [Google Scholar] [CrossRef]
  58. Tapscott, D. The Digital Economy: Promise and Peril in the Age of Networked Intelligence; McGraw-Hill: New York, NY, USA, 1996. [Google Scholar]
  59. Klerkx, L.; Jakku, E.; Labarthe, P. A review of social science on digital agriculture, smart farming and agriculture 4.0: New contributions and a future research agenda. NJAS-Wagening J. Life Sci. 2019, 90, 100315. [Google Scholar] [CrossRef]
  60. Liu, N.; Qian, Y.; Gu, X.; Li, G. Digital technology, e-commerce, and economic inequality: The case of China. Int. Rev. Econ. Financ. 2024, 91, 259–271. [Google Scholar] [CrossRef]
  61. Li, J. Examining the impact of digital financial inclusion on economic development in urban and rural areas of China using remote sensing. GeoJournal 2024, 89, 28. [Google Scholar] [CrossRef]
  62. Ding, K.K.; Ma, Z.B.; Wang, T. Impact of rural digital economy on famers’ income and its spatial heterogeneity. J. Arid. Land Resour. Environ. 2024, 38, 90–99. [Google Scholar]
  63. Yuan, C. Unlocking Rural Revitalization through the Digital Economy: A Journey of Exploration. EDP Sci. 2024, 181, 02033. [Google Scholar] [CrossRef]
  64. Kurtenbach, S.; Küchler, A.; Rees, Y. Digitalisation and neighbourhood cohesion in rural areas: Results of a mixed-method analysis. Raumforsch. Raumordn. 2021, 80, 329–343. [Google Scholar] [CrossRef]
  65. Abdulai, A.-R.; Gibson, R.; Fraser, E.D. Beyond transformations: Zooming in on agricultural digitalization and the changing social practices of rural farming in Northern Ghana, West Africa. J. Rural. Stud. 2023, 100, 103019. [Google Scholar] [CrossRef]
  66. Liu, Y.L. Evaluation and Mechanism Study of Rural Digitization Enhancing Farmers’ Living Standards. Guizhou Soc. Sci. 2022, 2, 160–168. [Google Scholar]
  67. Zhang, Q.; Webster, N.A.; Han, S.; Ayele, W.Y. Contextualizing the rural in digital studies: A computational literature review of rural-digital relations. Technol. Soc. 2023, 75, 102373. [Google Scholar] [CrossRef]
  68. Tsan, M.; Totapally, S.; Hailu, M.; Addom, B. The Digitalisation of African Agriculture Report 2018–2019: Executive Summary. CTA/Dalberg Advisers. 2019. Available online: https://cgspace.cgiar.org/bitstream/handle/10568/103198/Executive%20Summary%20V4.5%20ONLINE.pdf?sequence=1andisAllowed=y (accessed on 11 April 2024).
  69. Amin, M.A.; Nion, S.R.; Rahman Badhan, M.R. The impact of digitalization in local governance procedure on rural area: A study on Companiganj Upazila, Sylhet, Bangladesh. J. Econ. Sustain. Dev. 2022, 13, 54–63. [Google Scholar]
  70. Shui, H.; He, Y.L. Digital governance promotes modernization of rural governance: Theoretical basis and practical approach. Soc. Sci. Hunan 2024, 2, 75–84. [Google Scholar]
  71. Mi, L. Empowering Rural Governance Modernization with Digital Technology. Guangming Daily. 29 March 2024. Available online: https://news.cctv.com/2024/03/29/ARTIQhmL25wdPozIxufCALJl240329.shtml (accessed on 12 April 2024).
  72. Misra, D.C.; Mittal, P.K. e-Governance and Digitalization of Indian Rural Development. In Proceedings of the 12th International Conference on Theory and Practice of Electronic Governance, Melbourne, Australia, 3–5 April 2019. [Google Scholar] [CrossRef]
  73. Xu, J.; She, S.; Liu, W. Role of digitalization in environment, social and governance, and sustainability: Review-based study for implications. Front. Psychol. 2022, 13, 961057. [Google Scholar] [CrossRef]
  74. Ragin, C.C. The Comparative Method: Moving Beyond Qualitative and Quantitative Strategies; Berkeley University of California Press: Oakland, CA, USA, 1987; pp. 1–218. [Google Scholar]
  75. Pappas, I.O.; Woodside, A.G. Fuzzy-set Qualitative Comparative Analysis (fsQCA): Guidelines for research practice in Information Systems and marketing. Int. J. Inf. Manag. 2021, 58, 102310. [Google Scholar] [CrossRef]
  76. Mendel, J.M.; Korjani, M.M. Theoretical aspects of fuzzy set qualitative comparative analysis (fsQCA). Inf. Sci. 2013, 237, 137–161. [Google Scholar] [CrossRef]
  77. Rasoolimanesh, S.M.; Ringle, C.M.; Sarstedt, M.; Olya, H. The combined use of symmetric and asymmetric approaches: Partial least squares-structural equation modeling and fuzzy-set qualitative comparative analysis. Int. J. Contemp. Hosp. Manag. 2021, 33, 1571–1592. [Google Scholar] [CrossRef]
  78. Li, F.; Zhang, W. Research on the effect of digital economy on agricultural labor force employment and its relationship using SEM and fsQCA methods. Agriculture 2023, 13, 566. [Google Scholar] [CrossRef]
  79. Romero-Castro, N.; López-Cabarcos, M.A.; Piñeiro-Chousa, J. Finance, technology, and values: A configurational approach to the analysis of rural entrepreneurship. Technol. Forecast. Soc. Change 2023, 190, 122444. [Google Scholar] [CrossRef]
  80. Ragin, C.C. Redesigning Social Inquiry: Fuzzy Sets and Beyond; University of Chicago Press: Chicago, IL, USA, 2008. [Google Scholar]
  81. Information Development Bureau of the Cyberspace Administration of China. Announcement of the List of National Digital Rural Pilot Areas. Available online: https://www.cac.gov.cn/2020-09/18/c_1601988147662407.htm (accessed on 16 April 2024).
  82. Cheng, J.Q.; Luo, J.L.; Du, Y.Z.; Yan, J.Q.; Zhong, J. When institutional contexts and psychological cognition can stimulate entrepreneurship activity?: A study based on QCA approach. Sci. Sci. Manag. S. T. 2019, 40, 114–131. [Google Scholar]
  83. National Bureau of Statistics, Rural Social and Economic Survey Department. China County Statistical Yearbook 2022 (County and City Volume); China Statistics Press: Beijing, China, 2022.
  84. National Bureau of Statistics, Rural Social and Economic Survey Department. China County Statistical Yearbook 2021 (County and City Volume); China Statistics Press: Beijing, China, 2021.
  85. Zhao, J.J.; Wei, J.; Liu, T.J. The impacts of digital village development on farmer entrepreneurship and their mechanisms. Chin. Rural. Econ. 2023, 5, 61–80. [Google Scholar]
  86. Van Stel, A.; Carree, M.; Thurik, R. The Effect of Entrepreneurial Activity on National Economic Growth. Small Bus. Econ. 2005, 24, 311–321. [Google Scholar] [CrossRef]
  87. Ndimbo, G.K.; Yu, L.; Ndi Buma, A.A. ICTs, smallholder agriculture and farmers’ livelihood improvement in developing countries: Evidence from Tanzania. Inf. Dev. 2025, 41, 368–387. [Google Scholar] [CrossRef]
  88. Ma, H.J.; Xiao, B.; Zheng, X.L. The mechanism of entrepreneurial supply china’s effect on new venture’s performance: A qualitative comparative analysis based on the configurational perspective. Manag. Rev. 2023, 35, 298–309. [Google Scholar]
  89. Pappas, I.O.; Papavlasopoulou, S.; Mikalef, P.; Giannakos, M.N. Identifying the combinations of motivations and emotions for creating satisfied users in SNSs: An fsQCA approach. Int. J. Inf. Manage. 2020, 53, 102128. [Google Scholar] [CrossRef]
  90. Ding, H. What kinds of countries have better innovation performance?–A country-level fsQCA and NCA study. J. Innov. Knowl. 2022, 7, 100215. [Google Scholar] [CrossRef]
  91. Poorkavoos, M.; Duan, Y.; Edwards, J.S.; Ramanathan, R. Identifying the configurational paths to innovation in SMEs: A fuzzy-set qualitative comparative analysis. J. Bus. Res. 2016, 69, 5843–5854. [Google Scholar] [CrossRef]
  92. Schneider, C.Q.; Wagemann, C. Set-Theoretic Methods for the Social Sciences: A Guide to Qualitative Comparative Analysis; Cambridge University Press: Cambridge, UK, 2012. [Google Scholar]
  93. Greckhamer, T.; Furnari, S.; Fiss, P.C.; Aguilera, R.V. Studying configurations with qualitative comparative analysis: Best practices in strategy and organization research. Strateg. Organ. 2018, 16, 482–495. [Google Scholar] [CrossRef]
  94. Greckhamer, T.; Misangyi, V.F.; Fiss, P.C. Chapter 3 The two QCAs: From a small-N to a large-N set theoretic approach. In Configurational Theory and Methods in Organizational Research; Emerald Group Publishing Limited: Leeds, UK, 2013; pp. 49–75. [Google Scholar]
  95. Kumara, H.S. ICT driven E-Governance public service delivery mechanism in rural areas: A case of rural digital services (NEMMADI) project in Karnataka, India. J. Comput. ICT Res. 2010, 4, 37–45. [Google Scholar]
  96. Du, Y.Z.; Liu, Q.C.; Cheng, J.Q. What kind of ecosystem for doing business will contribute to city-level high entrepreneurial activity? A research based on institutional configurations. J. Manag. World 2020, 36, 141–155. [Google Scholar]
  97. Government Service Data Management Bureau of Yangxi County, Yangjiang City. Annual Report on Government Information Disclosure Work for the Year 2020. Available online: http://www.yangxi.gov.cn/yjyxwzsj/gkmlpt/content/0/516/mpost_516161.html#4694541 (accessed on 18 May 2024).
  98. Yangjiang Radio and Television Station. Yangjiang City Releases an Implementation Plan to Deepen the Facilitation of Approval Services for the Convenience of the Public. Available online: https://baijiahao.baidu.com/s?id=1652995682799319050&wfr=spider&for=pc (accessed on 18 May 2024).
  99. Southern Daily. Yangxi County, Yangjiang, Achieves Village-Level Full Coverage of Government Service Self-Service Machines, with a Complete Maintenance Team. Available online: https://baijiahao.baidu.com/s?id=1725782188170312965&wfr=spider&for=pc (accessed on 18 May 2024).
  100. Cheng, Y.Y. Research on urban-rural income gap, digital inclusive finance and industrial structure upgrading. Reform Open-Up 2021, 13, 1–6. [Google Scholar]
  101. Agriculture and Rural Affairs Committee of Dazu District, Chongqing Municipality. Giving “Digital Wings” to Rural Development in Dazu. Available online: http://www.dazu.gov.cn/qzfbm/qnyncw/zwxx_53317/gzdt_53319/202011/t20201111_8449937.html (accessed on 20 May 2024).
  102. China National Radio (CNR). Digitization Construction in Dazu District Empowers Rural Revitalization. Available online: https://www.sohu.com/a/500902408_362042 (accessed on 20 May 2024).
  103. Department of Agriculture and Rural Affairs of Anhui Province. “1124” Promoting Digital Rural Construction. Available online: http://nync.ah.gov.cn/snzx/sxxx/56012141.html (accessed on 20 May 2024).
  104. People’s Government of Jinzhai County. Jinzhai County: Empowered by Urban Brain AI, Boosting Digital Rural Revitalization Again. Available online: https://www.ahwx.gov.cn/szxc/dxal/202205/t20220530_6049356.html (accessed on 20 May 2024).
  105. Chen, X.X.; Duan, B. Has the digital economy narrowed the urban-rural gap? An empirical test based on the mediation effect model. World Geogr. Res. 2022, 31, 280–291. [Google Scholar]
  106. Philip, L.J.; Cottrill, C.; Farrington, J. ‘Two speed’ Scotland: Patterns and implications of the digital divide in contemporary Scotland. Scott. Geogr. J. 2015, 31, 148–170. [Google Scholar] [CrossRef]
  107. Townsend, L.; Wallace, C.; Fairhurst, G. ‘Stuck out here’: The critical role of broadband for remote rural places. Scott. Geogr. J. 2015, 131, 171–180. [Google Scholar] [CrossRef]
  108. Nanchang News Network. Jinxian Accelerates the Promotion of Rural Digital Economic Development. Available online: https://www.ncnews.com.cn/xwzx/ncxw/xqxw/202109/t20210914_1749476.html (accessed on 21 May 2024).
  109. Jiangxi Network Information Office. Comprehensive Measures, Solid Progress: Jinxian County Accelerates the Construction of National Digital Rural Pilot Demonstration Counties (Digital Rural Construction Dynamics Series 4). Available online: https://mp.weixin.qq.com/s?__biz=MzI0ODE4MDk0Nw==&mid=2652142471&idx=2&sn=0359e9da2c2829b09bb04b32c743d228&chksm=f244623bc533eb2d368b45be0faad0d35ac06aa5387aedf52d93a2e6b00fe1cdaacc0e6a41b8&scene=27 (accessed on 21 May 2024).
  110. Holling, C.S. Resilience and Stability of Ecological Systems. Annu. Rev. Ecol. Syst. 1973, 4, 1–23. [Google Scholar] [CrossRef]
  111. White, L.; Lockett, A.; Currie, G.; Hayton, J. Hybrid context, management practices and organizational performance: A configurational approach. J. Manag. Stud. 2021, 58, 718–748. [Google Scholar] [CrossRef]
  112. Wang, P.; Li, C.; Huang, C. The Impact of Digital Village Construction on County-Level Economic Growth and Its Driving Mechanisms: Evidence from China. Agriculture 2023, 13, 1917. [Google Scholar] [CrossRef]
  113. Domnina, S.V.; Podkopaev, O.A.; Salynina, S.U. The digital economy: Challenges and opportunities for economic development in Russia’s regions. Current Achievements. Chall. Digit. Chances Knowl. Based Econ. 2021, 133, 149–157. [Google Scholar]
  114. Kalu, I.; Obasi, C. E-Governance and Economic Development in Sub-Saharan Africa: A Case of Nigeria. Development 2021, 11, 87–95. [Google Scholar]
  115. Ward, N.; Brown, D.L. Placing the rural in regional development. Reg. Stud. 2009, 43, 1237–1244. [Google Scholar] [CrossRef]
  116. Yu, J. Governance risk and mitigation in the construction of digital government. Adm. Law 2022, 5, 13–20. [Google Scholar]
  117. Huang, L.; Xie, G.; Zheng, Y.; Tian, Y.; Cai, W. The configurational paths in BoP rural E-commerce entrepreneurial opportunity: A fuzzy-set qualitative comparative analysis. IEEE Trans. Comput. Soc. Syst. 2023, 11, 2433–2447. [Google Scholar] [CrossRef]
  118. Brown, R.; Mason, C. Inside the high-tech black box: A critique of technology entrepreneurship policy. Technovation 2014, 34, 773–784. [Google Scholar] [CrossRef]
  119. He, C.; Shi, R.; Wen, H.; Chu, J. Impact of Digital Literacy on Rural Residents’ Subjective Well-Being: An Empirical Study in China. Agriculture 2025, 15, 586. [Google Scholar] [CrossRef]
  120. Li, Y.; You, X.; Sun, X.; Chen, J. Dynamic assessment and pathway optimization of agricultural modernization in China under the sustainability framework: An empirical study based on dynamic QCA analysis. J. Clean. Prod. 2024, 479, 144072. [Google Scholar] [CrossRef]
  121. Liu, Y.; Li, M. Analyzing the impact of digital innovation ecosystem on the intelligent development in high-end equipment manufacturing industry: A dynamic QCA analysis. Bus. Process Manag. J. 2025, 31, 974–995. [Google Scholar] [CrossRef]
Figure 1. The theoretical mechanism model of rural digitalization for empowering CEG.
Figure 1. The theoretical mechanism model of rural digitalization for empowering CEG.
Systems 13 00488 g001
Figure 2. A simplified diagram of the three core steps in the fsQCA.
Figure 2. A simplified diagram of the three core steps in the fsQCA.
Systems 13 00488 g002
Figure 3. Regional distribution of the studied county-level case samples.
Figure 3. Regional distribution of the studied county-level case samples.
Systems 13 00488 g003
Figure 4. Typical counties corresponding to each configuration.
Figure 4. Typical counties corresponding to each configuration.
Systems 13 00488 g004
Figure 5. The substitution relationship between configurations.
Figure 5. The substitution relationship between configurations.
Systems 13 00488 g005
Table 1. Descriptive statistics.
Table 1. Descriptive statistics.
VariablesMeanSDABCDE
RDI79.05118.0931
RED50.94922.2010.460 **1
RGD50.21617.3850.421 **0.389 **1
RLD52.84718.7800.498 **0.508 **0.424 **1
CEG0.1210.1160.000−0.0100.1710.0361
Note: ** Correlation is significant at the 0.01 level (2-tailed). Rural digital infrastructure (RDI), rural economic digitalization (RED), rural governance digitalization (RGD), rural life digitalization (RLD), and county-level economic growth (CEG).
Table 2. Calibration anchor points for each variable.
Table 2. Calibration anchor points for each variable.
VariablesSet of ObjectivesAnchor Points
Full MembershipCrossover PointFull Non-Membership
Antecedent variablesRDI99.3481.4344.71
RED101.6946.0727.20
RGD78.4351.7922.80
RLD89.5648.7426.85
Outcome variablesCEG0.29260.10040.0315
~CEG0.03150.10040.2926
Note: “~” indicates the “not” of logical operation. Rural digital infrastructure (RDI), rural economic digitalization (RED), rural governance digitalization (RGD), rural life digitalization (RLD), and county-level economic growth (CEG).
Table 3. Results of analysis of necessary conditions.
Table 3. Results of analysis of necessary conditions.
Antecedent VariablesOutcome Variables
High CEGNot-High CEG
ConsistencyCoverageConsistencyCoverage
Environmental aspectRDI0.7500.7020.6950.629
~RDI0.6040.6720.6710.722
RED0.6550.7280.6420.690
~RED0.7210.6750.7470.677
Subject participation aspectRGD0.7100.7330.6170.617
~RGD0.6290.6290.7330.710
RLD0.6930.7130.6420.640
~RLD0.6500.6520.7120.692
Note: “~” indicates the “not” of logical operation. Rural digital infrastructure (RDI), rural economic digitalization (RED), rural governance digitalization (RGD), rural life digitalization (RLD), and county-level economic growth (CEG).
Table 4. Configurations leading to high/not-high CEG.
Table 4. Configurations leading to high/not-high CEG.
Antecedent VariablesOutcome Variables
High CEGNot-High CEG
S1aS1bS2S3NS1NS2
Environmental aspect
RDI
RED
Subject participation aspect
RGD
RLD
Consistency0.8400.9140.8890.9140.8130.811
Raw coverage0.5300.4050.4180.3510.5550.490
Unique coverage0.1010.0220.0480.0190.0940.029
Solution consistency0.8260.803
Solution coverage0.6780.584
Note: ● = core conditions exist, ⊕ = core conditions are absent. Where the entry is blank, this indicates that the conditions may or may not be present in the configuration. Rural digital infrastructure (RDI), rural economic digitalization (RED), rural governance digitalization (RGD), rural life digitalization (RLD), and county-level economic growth (CEG).
Table 5. Results of robustness tests for high CEG.
Table 5. Results of robustness tests for high CEG.
Antecedent VariablesOutcome Variables
High CEG
(the Consistency Threshold Increased from 0.8 to 0.85)
High CEG
(the Case Frequency Threshold Increased from 1 to 2)
High CEG
(the Crossover Point Decreased by 5%)
S1a′S1b′S2′S3′S1a″S1b″S2″S3″S1a‴S1b‴S2‴S3‴
Environmental aspect
RDI
RED
Subject participation aspect
RGD
RLD
Consistency0.8400.9140.8890.9140.8400.9140.8890.8940.8580.9260.8910.920
Raw coverage0.5300.4050.4180.3510.5300.4050.4180.3880.5210.4040.4180.341
Unique coverage0.1010.0220.0480.0190.1030.0300.0200.0070.0980.0240.0490.018
Solution consistency0.8260.8230.840
Solution coverage0.6780.6670.673
Note: ● = core conditions exist, ⊕ = core conditions are absent. Where the entry is blank, this indicates that the conditions may or may not be present in the configuration. Rural digital infrastructure (RDI), rural economic digitalization (RED), rural governance digitalization (RGD), rural life digitalization (RLD), and county-level economic growth (CEG).
Table 6. Results of robustness tests for not-high CEG.
Table 6. Results of robustness tests for not-high CEG.
Antecedent VariablesOutcome Variables
Not-High CEG
(the Consistency Threshold Increased from 0.8 to 0.85)
Not-High CEG
(the Case Frequency Threshold Increased from 1 to 2)
Not-High CEG
(the Crossover Point Decreased by 5%)
NS1′NS2′NS1″NS2″NS1‴/NS2‴
Environmental aspect
RDI
RED
Subject participation aspect
RGD
RLD
Consistency0.8690.8830.8130.8110.829
Raw coverage0.3870.3160.5550.4900.453
Unique coverage0.1420.0720.0940.0290.453
Solution consistency0.8670.8030.829
Solution coverage0.4590.5840.453
Note: ● = core conditions exist, ⊕ = core conditions are absent. Where the entry is blank, this indicates that the conditions may or may not be present in the configuration. Rural digital infrastructure (RDI), rural economic digitalization (RED), rural governance digitalization (RGD), rural life digitalization (RLD), and county-level economic growth (CEG).
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

MDPI and ACS Style

Xie, G.; Tian, Y.; Huang, L.; Li, M.; Blenkinsopp, J. What Kind of Rural Digital Configurations Contribute to High County-Level Economic Growth? A Study Conducted in China’s Digital Village Pilot Counties. Systems 2025, 13, 488. https://doi.org/10.3390/systems13060488

AMA Style

Xie G, Tian Y, Huang L, Li M, Blenkinsopp J. What Kind of Rural Digital Configurations Contribute to High County-Level Economic Growth? A Study Conducted in China’s Digital Village Pilot Counties. Systems. 2025; 13(6):488. https://doi.org/10.3390/systems13060488

Chicago/Turabian Style

Xie, Guojie, Yu Tian, Lijuan Huang, Muyun Li, and John Blenkinsopp. 2025. "What Kind of Rural Digital Configurations Contribute to High County-Level Economic Growth? A Study Conducted in China’s Digital Village Pilot Counties" Systems 13, no. 6: 488. https://doi.org/10.3390/systems13060488

APA Style

Xie, G., Tian, Y., Huang, L., Li, M., & Blenkinsopp, J. (2025). What Kind of Rural Digital Configurations Contribute to High County-Level Economic Growth? A Study Conducted in China’s Digital Village Pilot Counties. Systems, 13(6), 488. https://doi.org/10.3390/systems13060488

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop