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Article

Digital Economy as a Buffer: Alleviating the Adverse Effects of Land Resource Mismatch on Food Security

1
School of Economics, Minzu University of China, Beijing 100081, China
2
China Institute for Vitalizing Border Areas and Enriching the People, Minzu University of China, Beijing 100081, China
3
School of Economics, Peking University, Beijing 100871, China
*
Author to whom correspondence should be addressed.
Land 2024, 13(11), 1742; https://doi.org/10.3390/land13111742
Submission received: 1 October 2024 / Revised: 21 October 2024 / Accepted: 21 October 2024 / Published: 24 October 2024
(This article belongs to the Special Issue Land Use Policy and Food Security)

Abstract

:
In the era of the digital economy (DE), technology factors and data factors, like a two-wheel drive, have not only redefined the mode of production but also innovatively reshaped production relations. To examine how the DE can ensure food security (FS) in China, this study explores the negative impacts of land resource mismatch (LRM) on FS, the mechanisms of the impacts, and the critical role played by the DE in mitigating its negative impacts, based on China’s provincial-level panel data from 2011 to 2022. This study finds that, first, LRM leads to a reduction in food production, which, in turn, threatens FS, and this conclusion remains robust after a series of robustness tests. Second, the heterogeneity analysis finds that LRM has a greater negative impact on FS in regions with high urbanization levels, regions with a short tenure of officials, and regions that are not major food-producing regions. Finally, in a further analysis, the specific channels and solution paths of the negative impact of LRM on FS are explored in depth. LRM negatively affects the material base and production capacity of food production, including reducing the supply of land, labor, and capital factors for food production; the DE reduces the negative impact of LRM on FS through the use of digital technology and open government data.

1. Introduction

Food, as the most fundamental subsistence material for the populace, constitutes a crucial strategic material intimately tied to national livelihood and economic security, characterized by the discontinuity of its production process and the irreplaceable nature of its demand [1]. The quantity and quality of arable land are two key factors affecting a country’s food production capacity. Therefore, ensuring its security has always been a significant concern, particularly for countries like China, where arable land resources are scarce and ecological and environmental issues are severe. Both of these factors are, in fact, impacted by land resource mismatch (LRM) [2]. LRM refers to the phenomenon where local governments attract foreign investment by offering low industrial land prices and generous land supplies to cultivate the tax base and propel economic development. This often results in a significant conversion of agricultural land into construction land [3], as illustrated in Figure 1. Both domestic and international experience demonstrates that densely populated countries inevitably experience significant losses of arable land during the process of industrialization [4]. Firstly, the growth in population, economic development, housing demands, industrial expansion, and infrastructure construction necessitate vast amounts of land for construction, inevitably encroaching upon arable land [5,6]. For instance, Japan’s arable land decreased by 52% between 1955 and 1994, while South Korea’s decreased by 46% from 1965 to 1994 [7]. Similarly, according to the Statistical Yearbook of Urban Construction in China, China’s construction land has expropriated an average of 77,766.67 hectares of arable land annually over the past thirteen years. Secondly, the overall quality of land occupied for non-agricultural construction tends to be superior to that of the reclaimed wasteland used as compensation. Additionally, land scarcity often leads to overuse of arable land and excessive fertilizer application, resulting in a decline in the quality of arable land [8]. In 2023, China’s food output reached 695 million tons, witnessing a continuous growth for 18 consecutive years. However, in the same year, China’s grain imports reached total of 160 million tons, making it the world’s largest importer of agricultural products. This suggests that China’s food supply is insufficient to achieve a high level of self-sufficiency. Against this backdrop, it is of utmost practical significance to delve deeply into the effective pathways for optimizing land resource allocation and food production and supply, thereby enhancing food security (FS) levels. The advent of the digital economy (DE) has revolutionized agricultural development, with digital technology and data factors continually expanding into rural areas and gradually infiltrating agricultural production, circulation, and other aspects. By integrating these factors, they empower and augment the efficiency of other production factors, achieving a synergistic effect where 1 + 1 > 2 and providing a more potent leadership and support framework for addressing FS challenges. Based on this premise, this study aims to explore the potential impact of the DE on the phenomenon of LRM, with the objective of identifying a pragmatic path to bolster FS capacity.
The important cause of LRM in China lies in the national situation of large numbers of people and small amounts of land, resulting in the fact that most of the available land has already been taken up by arable land, for example, so that land for construction needs to encroach on land with other uses. The direct cause can be traced back to changes in local government behavior as a result of the fiscal decentralization brought about by the tax system reform. Corporate income tax has become the main source of finance for local governments, leading to a keen supply of land for construction at the expense of land for other uses [9]. Specifically, corporate income tax has emerged as the primary revenue source for local governments, prompting them to actively attract foreign investment by offering low industrial land prices and generous land supplies [10]. Over the past two decades, the dedication of substantial quantities of premium arable land towards economic construction has objectively propelled China’s swift economic development, albeit resulting in a relative plateau in agricultural growth, as depicted in Figure 2. During the initial phase of economic construction, spanning from 1992 to 2013, China’s average GDP growth rate stood at an impressive 16.28%. This rapid escalation in economic standing and residents’ incomes rendered the conversion of arable land for non-agricultural purposes feasible. Consequently, scholarly discourse concerning land resource allocation during this era predominantly centered on strategies to empower high-productivity enterprises to secure adequate factor inputs through effective land resource allocation, thereby ensuring an overall augmentation in economic productivity [11]. Consideration of the value of the decolonization of arable land is also limited to the realm of economic value [12]. When high-speed growth is no longer sustainable, the question of whether to continue to invest a large amount of high-quality arable land in industrial, mining, and storage construction becomes a questionable issue. During this period, the non-economic value of agricultural land was gradually emphasized, and the trade-off between economic and agricultural land became a hot topic. On the one hand, the ecological value of agricultural land has received more attention, such as its function of purifying air, preventing soil erosion, and regulating biodiversity [13,14]. On the other hand, the significance of arable land for guaranteeing FS is also recognized, and most of the existing studies show that both population growth and the income of the population place higher demands on the amount of arable land [15]. However, there remains a lack of clarity regarding whether LRM impacts food production, specifically through channels such as decreased land and other essential factors and how to address the FS challenges stemming from such mismatches. This study endeavors to provide answers to these questions, offering a novel perspective on understanding the ramifications of LRM in China and presenting a fresh idea for local governments to mitigate this phenomenon.
In 1983, the World Food Organization (WFO) articulated that the objective of FS is “to guarantee that all individuals have access to sufficient and affordable basic foodstuffs at all times” [16]. Consequently, the cornerstone of ensuring FS resides in the production and accessibility of food for an entire country’s populace. However, China’s dependence on foreign trade for food has risen over the years, from 10% in 2012 to around 20% in 2022, as shown in Figure 3, which means that FS is not yet fully guaranteed in China. From the perspective of food demand, China’s population, although no longer growing, will remain stable at over 1.4 billion for an extended period. Furthermore, as China’s economy expands and the living standards of its citizens improve, the food consumption structure of the Chinese populace are evolving. Direct food consumption, or the demand for staple foods like rice and wheat, remains stable. However, indirect food demand, particularly for feed and industrial food products, is on a steady rise. This surge ultimately fuels China’s overall food demand, especially for protein-rich feed consumption. Consequently, the challenge of FS necessitates increasingly effective solutions. From the perspective of food supply, academics have observed that LRM can lead to mismatches in other production factors, such as labor and capital [17,18]. A critical issue that has garnered insufficient attention is the encroachment of farmland and arable land for higher economic gains due to LRM. This phenomenon raises concerns about whether the loss of production factors resulting from such mismatches could further exacerbate adverse impacts on China’s FS. It is imperative to address this question to ensure the sustainability and stability of China’s food supply. Secondly, the empowering role of the DE in agriculture is increasingly recognized in the academic literature as a crucial solution for FS. Studies have demonstrated that precision farming techniques, smart agricultural machinery, and efficient supply chain management facilitated by the DE have significantly enhanced agricultural productivity. These advancements not only improve the efficiency of farming operations but also optimize resource allocation, thereby contributing to increased food production and helping to safeguard FS [19,20,21]. Given the slow growth in China’s arable land area and the lack of a significant improvement in land quality [22], it is essential to explore whether the DE can mitigate the adverse effects of LRM. By leveraging the DE, we can harness its potential to better position the primary industry as a new growth engine. Addressing the challenges of low output efficiency, environmental constraints, and resource limitations within China’s agricultural industry is crucial. By achieving this, we can increase agricultural productivity and point the way toward ensuring China’s FS and facilitating the transformation of its agricultural sector. This approach offers a promising direction for sustainable agricultural development and FS in China.
As we enter the DE era, advancements in digital technology have transformed data into a pivotal resource. Data are now universally acknowledged for their substantial economic and social value [23,24], stemming from their characteristics of shareability, reproducibility, and infinite availability. These attributes have shattered the constraints previously posed by limited supplies of traditional production factors, such as land and capital, thereby facilitating economic growth. Simultaneously, the explosive growth in the scale of data has not only elevated their prominence in the development of the DE but has also significantly impacted the transformation of traditional production modes [25]. This surge has led to the emergence of new industries, business models, and operational methods, solidifying data’s role as a crucial production factor driving economic and social development [26]. According to the Internet Development Report 2022, the scale of China’s DE industry is stable and good, realizing RMB 50.2 trillion of industrial output value, of which rural online retail sales contribute to RMB 2.05 trillion of innovative revenue growth, an increase of 11.3% year-on-year, which is a good result of the deep integration of the agricultural economy and the DE. In this context, data and digital technology function as the means of production and labor tools for the advancement of the DE. By optimizing resource allocation and enhancing production efficiency, it mitigates the excessive consumption of agricultural resources [27]. For instance, through the utilization of digital agricultural management systems [28], farmers can monitor real-time data such as soil moisture and weather conditions. This enables them to achieve precise fertilization and intelligent irrigation, thereby substantially enhancing the utilization efficiency of farmland. Obviously, the DE can effectively bolster the total factor productivity of agriculture by optimizing the allocation of production factors [29], thereby creating a new growth pole for the agricultural economy [30,31]. Consequently, it is crucial to explore whether the DE can address the challenges posed by the LRM for FS. While scholars have already identified that the development of the DE significantly contributes to FS in China, exhibiting a dampening effect on localized FS and a facilitating effect on neighboring areas’ FS [32], the crucial material basis for food production, namely arable land, has not been thoroughly discussed. Therefore, from the perspective of the DE, optimizing the allocation of land resources through digital technology and data factors in order to ensure the security of food production still remains an important topic that needs to be explored and practiced in depth.
Based on this, this study delves into the adverse effects of LRM on FS using China’s provincial panel data spanning from 2011 to 2022. Firstly, it is revealed that LRM can decrease food production and pose a threat to FS, a finding that remains significant even after conducting a series of robustness tests. Secondly, this study examines the specific mechanisms through which LRM adversely impacts FS, including the reduction in the supply of land, labor, and capital factors essential for food production. Finally, this study proposes practical recommendations to mitigate these negative impacts, namely leveraging the technology and data factors introduced by digital technology and open data to alleviate the threat posed by LRM to FS.
The research contributions of this study are as follows: Firstly, this study enhances the existing literature on FS. Typically, FS is examined from the perspectives of arable land area, fertilizer application, and mechanical inputs [33,34,35]. However, the FS issues stemming from the economic and social values underlying LRM have been overlooked by academic circles. This study aims to contribute to the literature by highlighting the negative impacts of LRM on FS. This not only diversifies the academic research on the factors influencing FS but also furnishes policymakers with scientific evidence on optimizing land resource allocation, conserving arable land resources, and safeguarding FS. Second, this study enriches the literature on the consequences of LRM. Existing research on the negative impacts of LRM has shifted from purely economic value comparison to sustainable development perspectives such as ecological value [36,37], but the impacts on FS and its specific channels of action have not yet been subjected to rigorous theoretical and empirical tests. This study explores the impact of LRM on FS and also constructs a multidimensional analytical framework for FS from the perspectives of factors of production such as capital, labor, and technology, which can not only help academics to further develop related research but also provides policymakers with more comprehensive and systematic policy references. Thirdly, this study engages in a discussion on the heterogeneous effects of LRM on FS, revealing that factors such as urbanization, the tenure length of officials, and the role of primary food-producing regions can all exert different impacts on FS. By analyzing regional heterogeneity, this study assists policymakers in crafting more precise regional development strategies, optimizing the layout of food production, and enhancing the national level of FS. Furthermore, it offers policymakers a more intuitive and specific anticipation of policy outcomes, which can aid in guiding policy formulation and adjustment. Lastly, this study explores the moderating role of the DE in alleviating the adverse effects of LRM on FS. Unlike much of the existing literature that treats the DE as an explanatory variable and examines its impact on food production and resilience [38,39], this study delves into how digital technology and data factors can facilitate food production development through various channels by incorporating moderating variables such as digital technology and open government data. This study not only broadens the research scope concerning the effectiveness of the DE but also presents policymakers with novel ideas for leveraging the DE to propel agricultural modernization.
The research layout of this study is as follows: the second part is the theoretical derivation; the third part is the research design, including the data source, model design, and variable definition; the fourth part is the empirical analysis, including a descriptive test and a basic regression and robustness test with heterogeneity analysis; the fifth part is a further analysis, including a mechanism test and moderating effect analysis; and the sixth part is the conclusion and recommendations.

2. Theoretical Analysis and Research Hypothesis

The rapid expansion of urbanization has created a tremendous demand for land resources. As populations have become increasingly concentrated in urban centers, the need for residential, commercial, and industrial land has surged significantly [40]. This has led to substantial amounts of farmland being repurposed for non-agricultural use. However, these transitions are not always driven by optimal market-based allocations but are frequently influenced by government intervention, which accelerates the conversion of land to non-agricultural purposes. Local governments, motivated by fiscal revenue as a performance indicator, often suppress industrial land prices and increase the availability of construction land, resulting in vast swaths of farmland being transformed into industrial or construction land [41]. This behavior distorts the land market’s pricing mechanism, creating a mismatch between agricultural and construction land, which, in turn, causes a considerable loss of arable land and weakens grain production capacity [42]. Consequently, the land resources essential for agricultural production are inadequately safeguarded, directly impacting grain yields and threatening national FS.
Moreover, from the standpoint of externality theory, the inefficient allocation of land resources generates substantial negative externalities [43]. In the course of urbanization, the loss of arable land diminishes the total area available for grain production. For a populous country like China, where arable land is relatively scarce, this represents a serious threat to FS. LRM, by reducing the amount of arable land, leads to decreased grain production, which can result in food supply shortages, price volatility, and a series of chain reactions that ultimately jeopardize national FS. Based on the above, this study proposes the following hypothesis:
H1. 
LRM reduces food production, which in turn jeopardizes FS.
Grain production is, in essence, a complex process involving the input and output of multiple factors. This study uses a production function, where the output is denoted by Y, and the five key production factors, capital, labor, technology, and data, are represented as L d , K , L a , T , and D , respectively. This model helps to reveal how changes in these production factors influence grain output.
From the perspective of land resources ( L d ), land is an essential factor in agricultural production. LRM directly reduces the amount of land available for grain production [43,44]. In the context of rapid urbanization, a significant portion of high-quality arable land has been converted into industrial and urban construction land, resulting in an insufficient supply of agricultural land. This mismatch not only decreases the total area of arable land but also creates an imbalance in land use, reducing the overall productivity of the land. Furthermore, the shrinking supply of arable land may limit both the scale and variety of crops that can be cultivated [45]. In regions where land resources are scarce and the quality of arable land is generally low, this mismatch further exacerbates constraints on food production, posing a serious threat to FS.
From the perspective of capital ( K ), LRM results in insufficient capital investment in agricultural production. Local governments tend to allocate land resources for industrial development, diverting capital that could have been used to enhance agricultural productivity, improve agricultural infrastructure, and promote agricultural technology to more profitable industrial sectors [46]. This lack of investment reduces the profitability and enthusiasm of farmers [46], restricting agricultural technological progress and capital accumulation. As a result, grain production struggles to achieve economies of scale or intensive growth, hindering increases in grain output.
From the perspective of labor ( L a ), the flow of labor is also impacted by LRM. As urbanization accelerates, a large number of young rural workers migrate to cities in search of higher incomes and better living conditions [47]. This trend reduces both the quantity and quality of labor engaged in grain production, resulting in an aging workforce [48] and a decline in labor skills. These factors hinder the refined management of agricultural production and the adoption of new technologies, exacerbating the challenges in agricultural production and limiting the total grain supply.
In summary, LRM negatively affects the material base and production capacity of food production by reducing the supply of land, capital, and labor factors, thus endangering the stability of national FS. Therefore, this study proposes the following hypothesis:
H2a. 
LRM reduces the availability of land factor for food production, which, in turn, jeopardizes FS.
H2b. 
LRM reduces the availability of capital factors for food production, which, in turn, jeopardizes FS.
H2c. 
LRM reduces the supply of labor factor for food production, which, in turn, jeopardizes FS.
With the rapid development of digital information technologies and the aggregation of vast amounts of data, “digitalization” has become the prevailing trend [49]. Emerging digital technologies, such as big data, cloud computing, and the Internet of Things, are increasingly penetrating various sectors, reshaping existing production models [50]. The DE enables the digital transformation of traditional agriculture through data and digital technologies. Based on the productivity theory of Marx, the revolutionary breakthrough of technology and the innovative allocation of production factors, namely, the labor force, labor means and labor objects and their optimal combination help to promote the improvement in productivity. Following this theory, the deep integration of data and technology with traditional production factors can not only transform agricultural production methods but also enhance overall productivity.
From the perspective of digital technologies (T), large-scale farming has gradually emerged as the dominant trend in agricultural development within the current context of rural land transfers. Expanding production scales allows farmers and agricultural companies to utilize large machinery and digital technologies for operations, thereby liberating labor [51]. Digital technologies can transcend the limitations of resource scarcity and the obsolescence of traditional agricultural practices [52]. By transforming the business models and operational concepts of modern agricultural enterprises through information technologies, digital solutions can enhance the efficiency of labor and material resources, ultimately improving agricultural productivity [53] and the quality of grain production. For instance, smart agricultural equipment can monitor crop growth throughout the production process and assist in adjusting factors such as light, water, temperature, and soil quality, thereby mitigating the adverse effects of natural variables and ensuring stable crop yields. This fosters the standardization and scaling of agricultural production, alleviating the constraints of resource scarcity.
From the perspective of data (D), data exhibit characteristics of non-competitiveness and non-exclusivity, thereby overcoming the constraints imposed by the limited supply of traditional production factors [54] and further enhancing productivity levels. Although data have always existed in traditional agriculture, they have often been fragmented and granular, lacking continuity and completeness, which limits their inherent value. In the digital era, these data can now be collected, classified, cleaned, aggregated, and shared through open government data platforms, facilitating widespread application by various stakeholders. For example, on the open government data platforms, there is basic situation information of rural areas under the theme of “agriculture and rural areas”, including the total output value of agriculture, forestry, animal husbandry and fisheries, the production and operation information of agricultural products, etc., tax information, penalty data, and consumption data under the theme of “credit service” and “fiscal and taxation finance”. Based on these open government data, first of all, they help agricultural operators to obtain richer decision-making information, including information on agricultural resources, supply and demand in the agricultural market, and policy information on industrial development, thus helping them to make scientific choices in their decision-making. Furthermore, LRM is often accompanied by insufficient capital investment in agriculture. However, open government data sharing can help alleviate the information asymmetry between banks and enterprises [55], enabling banks to more accurately assess the creditworthiness and production potential of agricultural companies. This increases credit support for agricultural enterprises, facilitating adequate capital investment, expanding production scales, and enhancing total factor productivity, thereby ensuring the sustainability of agricultural production and FS.
Based on the above analysis, this study proposes the following hypothesis:
H3a. 
Digital technology innovations can mitigate the threat of LRM to FS.
H3b. 
Open government data can mitigate the threat of LRM to FS.
The theoretical mechanism diagram of this study is shown in Figure 4.

3. Research Design

3.1. Data Sourcing

This study selected 30 provinces in China (excluding Tibet due to data availability) as the research focus, covering the period from 2011 to 2022. The relevant data were primarily sourced from the China Regional Statistical Yearbook, Provincial Statistical Yearbooks, the Wind, and the CSMAR database. After excluding samples with significant missing data, a total of 360 samples were included in this analysis.

3.2. Model Setting

3.2.1. Baseline Regression Model

This study first empirically examined the negative impact of LRM on FS. The model is constructed as shown in Equation (1):
F P i t = α 1 + β 1 L R M i t + γ 1 C o n t r o l s i j t + μ i + δ t + ε i t
In this Equation, i represents the city; t represents the year; j represents the type of control variable; F P i t is a proxy variable for the level of FS in each province; L R M i t is a proxy variable for the degree of LRM in each province; C o n t r o l s i j t represents various control variables; μ i and δ t represent individual fixed effects and time-fixed effects, respectively; and ε i t represents the random disturbance term.

3.2.2. Mechanism Effect Model

To examine the specific mechanism through which LRM negatively affects FS, this study followed the two-step method proposed by Jiang (2022) [56] to construct the models shown in Equations (2) and (3):
F P i t = α 1 + β 1 L R M i t + γ 1 C o n t r o l s i j t + μ i + δ t + ε i t
M e d i a t o r i t = α 2 + β 2 L R M i t + γ 2 C o n t r o l s i j t + μ i + δ t + ε i t

3.2.3. Moderating Effect Model

To investigate whether the DE can mitigate the negative impact of urban LRM on FS, this study constructed a moderating effect model, as shown in Equation (4):
F P i t = α 3 + β 3 L R M i t + φ L R M i t × D i g i t a l i t + μ D i g i t a l i t + γ 3 C o n t r o l s i j t + μ i + δ t + ε i t
D i g i t a l i t represents the DE-related variables that play a moderating role in the relationship between urban LRM and FS.

3.3. Variable Definition and Description

3.3.1. FS Level

This study employed the annual grain output of each province to assess FS levels across different regions. There are two main reasons for using total grain output as a measure of FS. First, as Godfray et al. (2010) [57] pointed out, the most fundamental dimension of global food security is to ensure an adequate supply of food, and an increase in food production has a direct impact on the adequacy of that supply. Second, measuring the total grain output, as opposed to the yield per unit area, can better mitigate various measurement and statistical errors [58]. This is because an increase in the yield per unit area may occur alongside a decrease in the area sown for other crops. Therefore, the total grain output serves as a more direct and accurate indicator of FS.

3.3.2. LRM

The theory of this study is mainly based on the phenomenon of the overprovision of urban industrial land by local governments. Drawing from the methodology in the mainstream literature and utilizing detailed data from the China Statistical Yearbook of Land and Resources on land concessions by method and land use type at the national level, this study calculated the proportion of industrial, mining, and warehousing land across various concession methods. These proportions were then used as weights to estimate the area of industrial, mining, and warehousing land in the land concessions of each province, followed by the calculation of this area as a percentage of the total land concessions. When a city allocates a large portion of its industrial and warehousing land through negotiated agreements, it becomes more susceptible to issues such as large-scale land occupation by development zones and low entry barriers for enterprises. This can lead to LRM, which may subsequently cause imbalances in the allocation of labor and capital.

3.3.3. DE Variables

In line with the existing literature and the availability of relevant data at the provincial level, this study constructed moderating effect indicators from two directions: technological factors and data factors, labeled as DigTech and Egoverment, respectively.

3.3.4. Control Variables

Drawing from the relevant mainstream literature, this study included control variables such as the rural Engel coefficient, among others. The specific variables used in this study are shown in Table 1.

4. Empirical Results

4.1. Descriptive Statistics

As shown in Table 2, the average FS level (FP) was 7.122, with a standard deviation of 1.285, a minimum value of 3.393, and a maximum value of 8.971. This indicates that while China’s overall FS is stable, there are regional differences. The average LRM (LRM) was 0.178, which is relatively low, but it had a standard deviation of 0.048, demonstrating some regional heterogeneity. Notably, the region with the highest degree of LRM reached 0.325, highlighting the need for further optimization of land resource allocation to reduce the mismatch.
This study mapped the spatial distribution of China’s FS levels and the degree of LRM in 2011 and 2022, respectively. As shown in Figure 5, first, from an overall perspective, regions with higher food production were primarily concentrated in the northeast and central areas, with Heilongjiang Province in the northeast standing out significantly, as its grain output far exceeded that of other provinces. In contrast, some provinces in the southwest had relatively low grain production. This distribution pattern reflects the regional concentration of China’s grain production resources, with the northeast and central regions emerging as key grain-producing areas due to their favorable natural conditions, while the western and southern regions have relatively lower production capacity, constrained by less favorable natural conditions. Second, the severity of LRM varied significantly across regions, with higher levels observed in the northeast and certain western provinces, while other areas experienced lower degrees of mismatch. Finally, when analyzing these maps together, it becomes apparent that LRM in China improved by 2022, while FS levels across the provinces also increased over the past 12 years. This observation prompts an important question: is there an underlying connection between the reduction in LRM and the improvement in FS?

4.2. Baseline Regression

Table 3 presents the baseline regression results of the impact of LRM on FS. In this baseline regression, a progressive regression strategy was used to mitigate potential endogeneity caused by omitted variables. In Column (1), which only controls for province-fixed and year-fixed effects, the LRM coefficient is significantly negative. In Columns (2) and (3), control variables are gradually added, and the regression results show that the LRM coefficient remained significantly negative, indicating that LRM reduces FS levels, thus confirming H1.

4.3. Robustness Tests

4.3.1. Changing the Sample Time

The COVID−19 pandemic led to widespread economic lockdowns and business closures, significantly disrupting primary industry activities. To account for these exceptional circumstances, data from 2020 and 2021 were excluded, and the regression was re-estimated. As shown in Column (1) of Table 4, the LRM coefficient remained significantly negative, affirming the robustness of the main findings.

4.3.2. Changing the Dependent Variable

Due to the significant influence of natural, market, and other socio-economic factors on grain production, it often exhibits some volatility. Therefore, grain production volatility is an important indicator of the stability of grain production. Since cereals are a key subset of food, this study replaced the original dependent variable with grain production volatility (Volatility) and the logarithmic value of grain output (lnGrain) and re-estimated the regression. The results, shown in Table 4, indicate that in Column (2), the LRM coefficient is 1.0901 and is significant at the 1% level, indicating that LRM increases grain production volatility, which may threaten FS. In Column (3), the LRM coefficient is significantly negative, indicating that LRM reduces grain output. These results are consistent with the baseline regression conclusions.

4.3.3. Lagged Independent Variable

To further test the robustness of the main conclusions, the study introduced a one-period lagged independent variable and re-estimated the baseline regression to address potential endogeneity. As can be seen in Column (4) of Table 4, the lagged LRM coefficient was −3.7193 and significant at the 1% level, confirming that even when considering potential dynamic effects, the negative impact of LRM on FS remains robust.

4.3.4. Excluding Extreme Values

To avoid the influence of extreme values on the baseline regression results, this study trimmed the top and bottom 1% of the values for FP and LRM and then re-estimated the regression. Column (5) of Table 4 shows that the LRM_w coefficient remained significantly negative, indicating that LRM continues to impact grain production negatively, consistent with the baseline results.

4.3.5. PSM Matching

To mitigate potential endogeneity and sample selection bias, the study employed the PSM approach for robustness testing. Control variables from the baseline regression were used as matching variables, and the radius matching method was applied. The results, as shown in Column (6) of Table 4, indicate that the LRM1 coefficient remained significantly negative, further confirming the robustness of the findings.

4.4. Heterogeneity Tests

4.4.1. Heterogeneity in Urbanization Rate

In examining the negative impact of LRM on total grain output, the level of urbanization emerged as an important factor. The study divided the sample into a high-urbanization group (urbanization rate above the mean) and a low-urbanization group (urbanization rate below the mean). As shown in Columns (1) and (2) of Table 5, LRM had a more significant effect on grain output in areas with higher urbanization rates. As discussed earlier, the higher the urbanization rate, the greater the demand for construction land and non-agricultural jobs. Therefore, these areas tend to occupy low-cost arable land for economic development, and due to economies of scale, they attract a wide range of production factors, leading to a faster decline in grain production.

4.4.2. Heterogeneity Based on Officials’ Tenure

To explore the heterogeneity in the negative impact of LRM on grain output based on officials’ tenure, the study divided the sample into a long-tenure group and a short-tenure group based on the median tenure of provincial party secretaries. As shown in Columns (3) and (4) of Table 5, the negative impact of LRM on FS was greater in areas with shorter tenures. This is because local governments have considerable discretion in land transfers, and officials with shorter tenures are more likely to expand industrial land supply to rapidly boost GDP and demonstrate their capabilities. Since FS is not a key performance indicator for officials, it is more likely to be neglected by those with shorter tenures.

4.4.3. Heterogeneity in Major Grain-Producing Areas

China assigns distinct functional roles to its provinces, with major grain-producing regions, like Henan Province, being crucial for national FS. Therefore, China implements stricter farmland protection policies and provides more generous economic incentives for farmland protection in these areas, reducing the likelihood of farmland being occupied for construction and slowing the decline in grain output. This study classified 13 provinces—Heilongjiang, Henan, Shandong, Sichuan, Jiangsu, Hebei, Jilin, Anhui, Hunan, Hubei, Inner Mongolia, Jiangxi, and Liaoning—as major grain-producing areas based on their designation in 2001. The remaining provinces were classified as non-major grain-producing areas. The regression results, as shown in Columns (5) and (6) of Table 5, indicate that the negative impact of LRM on FS was more pronounced in non-major grain-producing areas.

5. Further Analysis

5.1. Mechanism Effects

As discussed in the theoretical analysis, LRM absorbs essential agricultural resources, such as land, capital, and labor, thereby reducing grain production and threatening FS. To examine these impact pathways, this study employed a two-step approach for mechanism effect testing.

5.1.1. Land Factor

In this study, the natural logarithm of the sown area (in thousands of hectares) of cereals, pulses, and yams in each province in the current year plus one was taken as a proxy variable for the land factor and brought into the mechanism effect model for testing. As seen in the regression results in Column (1) of Table 6, the coefficient of LRM was significantly negative, indicating that LRM reduces the sown area for grain. The imbalance in land allocation results in a large portion of land resources originally designated for grain production being converted into non-agricultural uses, such as industrial, commercial, and residential development. This shift not only reduces the physical space available for food production but also limits the scale and variety of crops that can be cultivated. The growing scarcity of arable land poses a serious threat to the stability and sustainability of grain production, with significant implications for FS, confirming H2a.

5.1.2. Capital Factor

In this study, the natural logarithm of multiplying the share of agricultural output and investment in agriculture, forestry, livestock, and fisheries in each province in the current year plus one was taken as a proxy variable to calculate the capital factor, which was brought into the mechanism effect model for testing. According to the regression results in Column (2) of Table 6, the LRM coefficient was −7.7587 and significant at the 5% level, indicating that LRM leads to insufficient capital investment in agriculture. Capital is an essential factor in agricultural production, especially with the increasing reliance on mechanization and infrastructure in modern agriculture. However, local governments often prioritize land allocation for industrial development, which limits agricultural investments and capital supply. This capital shortfall hinders the adoption of new technologies and equipment upgrades, reducing production efficiency and posing a threat to FS, confirming H2b.

5.1.3. Labor Factor

This study took the number of people employed in the primary industry in the current year in each province as a proxy variable for the labor factor and brought it into the mechanism effect model for testing. As shown in the regression results in Column (3) of Table 6, the LRM coefficient was significantly negative, indicating that LRM contributes to rural labor loss. The migration of rural labor to cities has intensified with urbanization. Due to LRM, rural income levels are adversely affected, weakening the ability of rural areas to retain their workforce. As a result, many laborers migrate to cities in search of better opportunities, which exacerbates the challenges in agricultural production and impacts the overall grain supply, confirming H2c.

5.2. Moderating Effects

As discussed in the theoretical analysis, in the era of the DE, the rapid advancement of digital technologies has led to the integration of data into production, distribution, and consumption processes with unprecedented scope and depth, transforming traditional production models. To validate the moderating effects of technology and data factors in alleviating LRM, this study conducted tests on these moderating effects.

5.2.1. Technological Factor

In this study, the natural logarithm of the number of digital innovation patent applications in each province plus one was taken as a proxy variable for the technology factor and brought into the moderating effects model for testing. As shown in the regression results in Column (1) of Table 7, the coefficient for LRMXDigTech was 1.0591 and significant at the 1% level, indicating that the development of digital technologies can mitigate the risks posed by LRM to FS. Digital technology overcomes the limitations of resource scarcity and the backwardness of traditional agricultural techniques. With the advancement of rural land transfers and the expansion of production scales, farmers or agricultural enterprises can utilize digital technologies and large-scale machinery to achieve the precise management of production, improving agricultural efficiency. This trend alleviates the inefficiency in agricultural production caused by LRM, thereby reducing the threat to FS, confirming H3a.

5.2.2. Data Factor

In this study, the policy variable Egoverment was defined as follows: if the province went online with the open government data platform in that year, the value of Egoverment was assigned to 1, and otherwise, it was assigned to 0, and then the moderating effect model was tested. As demonstrated by the regression results in Column (2) of Table 7, the coefficient of LRMXEgoverment was significantly positive, indicating that the open government data can mitigate the negative impact of LRM on FS. The open government data break down information barriers between banks and enterprises, enabling agricultural companies to gain sufficient financial support. Moreover, the interaction between open government data and other production factors can generate a multiplier effect. By integrating deeply with digital technologies, agricultural firms can adopt precise and intelligent management practices, optimizing the allocation of agricultural resources. Thus, data factors play an essential role in reducing the risks posed by LRM to FS, supporting H3b.

6. Conclusions and Suggestions

6.1. Research Conclusions

This study uses provincial panel data from China spanning from 2011 to 2022 to investigate the negative impact of LRM on FS, examine the impact mechanisms, and highlight the crucial role of the DE in alleviating these negative outcomes. First, the findings reveal that LRM significantly reduces grain production, posing a threat to FS. This conclusion remains robust after a series of robustness checks. Second, this study discusses the heterogeneous effects of LRM on FS, showing that regions with higher urbanization levels, shorter official tenures, and that are non-major grain-producing areas experience a more pronounced negative impact on FS. Lastly, this study explores how LRM impairs FS and offers potential solutions. By diminishing the supply of essential factors such as land, labor, and capital for grain production, LRM undermines the material foundation and productive capacity of the sector. The DE, by providing technological and data resources through digital innovation and open government data, helps mitigate the threat posed by LRM to FS.

6.2. Policy Recommendations

In order to address LRM, policy guidance should be enhanced, and institutions should be optimized. First, land market reforms should be promoted by establishing a comprehensive land market system and improving transaction rules to ensure the efficient allocation of land resources through market mechanisms. Second, the fiscal tax-sharing system should be reformed to reduce local government dependence on land-based financing. This can be achieved by moderately adjusting the system to discourage the transfer of large amounts of arable land for short-term fiscal gain. A diversified local revenue system should be established, with an emphasis on increasing tax revenue sharing and transfer payments to alleviate fiscal pressures on local governments. Finally, a mechanism linking the tenure of officials to the food security accountability system should be established. Considering that the short tenure of officials may exacerbate short-term behaviors in land resource management, it is recommended that food security be incorporated into the performance appraisal system of local officials, especially for non-major food-producing areas and sensitive areas of land resource management, to implement a stricter food security accountability system and to encourage officials to adopt, during their term of office, land policies that are conducive to the long-term development of food production.
The construction of high-standard farmland should be promoted, and farmland protection should be strengthened. First, investment in high-standard farmland should be increased to boost both production capacity and output efficiency. Land consolidation and agricultural water conservancy projects should be implemented to improve infrastructure and enhance land use efficiency. Second, farmland management systems should be improved with strict land use controls, setting clear boundaries for arable land and ecological protection zones to prevent illegal occupation of high-quality farmland. A robust compensation system for farmland occupation should be established to ensure that any land taken for construction is replaced by land of equal or superior quality. Finally, stringent farmland protection policies should be enforced, farmland quality should be regularly monitored, and damaged farmland should be promptly restored. Illegal activities that harm the quality of farmland should be punished.
Rural employment conditions should be improved, and the supply of labor factors should be increased. First, rural infrastructure can be enhanced by improving roads, water supply, electricity, telecommunications, and other facilities to make rural living more convenient and attractive for labor retention. Second, rural vocational education should be invested in to build a multi-tiered training system that improves the skills and competence of the rural workforce. Various training programs should be provided to help farmers master modern agricultural techniques, thereby increasing productivity and market competitiveness. Finally, young people should be encouraged to return to rural areas by offering policy support and financial incentives for entrepreneurship in modern agriculture and processing industries.
External investment should be attracted to increase agricultural capital supply. First, agricultural investment should be increased through both direct fiscal support and policy-based financial assistance. Government subsidies and funding for agricultural infrastructure should be expanded to boost capital investment in agriculture directly. Financial services such as low-interest loans and credit guarantees should be offered to lower financing costs and encourage further investment in agricultural production. Second, the development of agricultural insurance should be promoted to protect against risks from natural disasters and market fluctuations. The coverage of agricultural insurance should be expanded to ensure more farmers benefit from this financial protection, and additional social capital should be attracted into the agricultural sector to strengthen overall capital supply.
Open government data should be leveraged to improve land resource allocation efficiency and grain production. The government should lead the creation of a comprehensive, authoritative, and user-friendly open government data platform that consolidates information from the agriculture, land, meteorology, and market sectors. Clear standards and access protocols should be established to ensure that key agricultural and land resource data are made available in a timely and accurate manner. Enterprises, research institutions, and individuals should be encouraged to utilize open data to develop intelligent agricultural solutions, such as precision fertilization, smart irrigation, and pest forecasting. Financial institutions should also use these data to better assess the creditworthiness of agricultural operators, promoting innovative financing models like supply chain finance and agricultural insurance linked to futures markets.
Digital technology must be actively utilized to improve agricultural productivity and quality, ensuring national FS. First, investment in rural digital infrastructure should be increased, and internet access should be expanded to ensure farmers and agricultural businesses can easily access digital resources. Agricultural big data centers should be built to gather and analyze information on production, markets, and resources, providing scientific support for agricultural decision-making. Second, developing and using intelligent agricultural machinery, such as autonomous tractors, drones, and smart seeders, should be promoted to enhance production efficiency. The Internet of Things (IoT) technology should also be employed to monitor soil conditions and crop growth in real time, providing precise production guidance. Finally, digital management capabilities in agriculture can be strengthened by creating integrated platforms for managing production, markets, and resources. Farmers and agricultural employees should be trained in digital skills to ensure they can fully utilize new technologies in their work.

Author Contributions

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

Funding

This research was funded by the National Natural Science Foundation of China Youth Science Program (Grant No. 72403269). The authors declare that they have no relevant or material financial interests that relate to the research described in this study.

Data Availability Statement

The datasets used and/or analyzed in the current study are available from the corresponding author upon reasonable request. The data are not publicly available due to our need for further research utilization and the potential for increased publication opportunities by retaining them.

Conflicts of Interest

The authors declare that this research was conducted without any commercial or financial relationships that could be construed as potential conflicts of interest.

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Figure 1. The distribution of arable land has been converted to other uses since 2010.
Figure 1. The distribution of arable land has been converted to other uses since 2010.
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Figure 2. The relationship between food production and economic development in China. (a) China’s total GDP and total food production; (b) China’s food production growth rate and GDP growth rate.
Figure 2. The relationship between food production and economic development in China. (a) China’s total GDP and total food production; (b) China’s food production growth rate and GDP growth rate.
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Figure 3. Degree of dependence upon China’s food foreign trade. (a) China’s food imports and exports; (b) degree of dependence upon China’s food foreign trade.
Figure 3. Degree of dependence upon China’s food foreign trade. (a) China’s food imports and exports; (b) degree of dependence upon China’s food foreign trade.
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Figure 4. The theoretical mechanism diagram.
Figure 4. The theoretical mechanism diagram.
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Figure 5. Spatial distribution of the level of food security and the degree of LRM in China. (a) Level of food security in China in 2011; (b) level of food security in China in 2021; (c) degree of LRM in China in 2011; (d) degree of LRM in China in 2022.
Figure 5. Spatial distribution of the level of food security and the degree of LRM in China. (a) Level of food security in China in 2011; (b) level of food security in China in 2021; (c) degree of LRM in China in 2011; (d) degree of LRM in China in 2022.
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Table 1. The definition of variables.
Table 1. The definition of variables.
Variable TypeVariable NameVariable Construction
Dependent VariableFPThe grain, legume, and tuber output of each province in the given year (unit: 10,000 tons).
Independent VariableLRMThe proportion of land used for industrial, mining, and warehousing purposes in the total land transferred in the given year.
Mechanism VariablesLandThe natural logarithm of the sown area for grain, legumes, and tubers in each province in the given year, plus 1 (unit: 1000 hectares).
CapitalThe natural logarithm of the product of the proportion of agricultural output and the total investment in agriculture, forestry, animal husbandry, and fisheries in the given year, plus 1.
LaborThe number of people employed in the primary industry in each province in the given year.
Mechanism VariablesDigTechThe natural logarithm of the number of digital innovation patent applications in each province in the given year, plus 1.
EgovermentIf the province launched an open government data platform in the given year, it is assigned a value of 1; otherwise, 0.
Control VariablesEngelThe rural Engel coefficient.
AgrMacThe number of agricultural machinery service organizations.
AgrLoansAgricultural-related loans.
IntensityThe intensity of soil and water conservation efforts.
EmissionsThe amount of ammonia nitrogen emissions (tons).
ResilienceDisaster resilience capacity.
Table 2. Descriptive statistics.
Table 2. Descriptive statistics.
VariableObsMeanStd. Dev.MinMax
FP3607.1221.2853.3938.971
LRM3600.1780.0480.0990.325
Land3607.7331.2733.8619.595
Capital3603.0941.31805.05
Labor3606.1691.1153.0917.701
DigTech3606.5052.493011.644
Egoverment3600.160.36701
Engel36033.8396.18822.61569.939
AgrMac3605869.7926500.2393226,547
AgrLoans3609633.4359250.92878.76165,566
Intensity3602.2510.4750184.286
Emissions36011,607.33218,549.074075,800
Resilience3600.5570.1650.11
Table 3. Baseline regression.
Table 3. Baseline regression.
(1)(2)(3)
VariablesFPFPFP
LRM−2.2409 **−2.4524 **−2.2690 **
(−2.22)(−2.35)(−2.19)
Engel −0.0051−0.0055
(−1.23)(−1.35)
AgrMac 0.0000 ***0.0000 ***
(3.90)(3.58)
AgrLoans 0.0000 **0.0000
(2.35)(0.97)
Intensity 0.0003
(0.56)
Emissions −0.0000 *
(−1.82)
Resilience −0.1286 ***
(−2.67)
Constant7.4469 ***7.4314 ***7.5680 ***
(50.85)(37.01)(36.90)
Observations360360360
R-squared0.9930.9930.994
Controls FEYESYESYES
Province FEYESYESYES
Year FEYESYESYES
r2_a0.9920.9930.993
F4.9358.0916.040
Note: robust t-statistics are in parentheses, *** p < 0.01, ** p < 0.05, * p < 0.1, the same as below.
Table 4. Robustness test results.
Table 4. Robustness test results.
(1)(2)(3)(4)(5)(6)
VariablesFPVolatilitylnGrainFPFP_wFP
LRM−2.6367 **1.0901 ***−2.3061 **
(−2.36)(2.93)(−2.17)
L.LRM −3.7193 ***
(−3.78)
LRM_w −2.1237 **
(−2.22)
LRM1 −0.0340 *
(−1.84)
Constant7.5876 ***−0.09207.4594 ***7.7483 ***7.5342 ***7.3821 ***
(32.79)(−1.25)(35.41)(39.82)(39.84)(77.65)
Observations267360360327327270
R-squared0.9940.6310.9940.9940.9950.994
Controls FEYESYESYESYESYESYES
Province FEYESYESYESYESYESYES
Year FEYESYESYESYESYESYES
r2_a0.9930.5710.9930.9930.9940.993
F6.1293.9456.1727.5766.14821.92
Note: robust t-statistics are in parentheses, *** p < 0.01, ** p < 0.05, * p < 0.1, the same as below.
Table 5. Heterogeneity regression result.
Table 5. Heterogeneity regression result.
(1)(2)(3)(4)(5)(6)
High Urbanization RateLow Urbanization RateLong Tenure of OfficialsShort Tenure of OfficialsMajor Grain-Producing AreaNon-Major Grain-Producing Area
VariablesFPFPFPFPFPFP
LRM−4.2138 **0.8557−1.2248−9.4264 **−0.7128−3.0132 *
(−2.01)(1.28)(−1.04)(−2.43)(−1.29)(−1.75)
Constant7.2095 ***7.3479 ***7.4136 ***7.9497 ***8.3286 ***6.9257 ***
(18.02)(53.77)(31.32)(12.28)(69.98)(20.91)
Observations19416627882156204
R-squared0.9930.9990.9940.9950.9920.988
Controls FEYESYESYESYESYESYES
Province FEYESYESYESYESYESYES
Year FEYESYESYESYESYESYES
r2_a0.9900.9980.9930.9890.9900.985
F3.9935.3833.7891.7364.2252.395
Note: robust t-statistics are in parentheses, *** p < 0.01, ** p < 0.05, * p < 0.1, the same as below.
Table 6. Influence mechanism regression results.
Table 6. Influence mechanism regression results.
(1)(2)(3)
VariablesLandCapitalLabor
LRM−1.8331 *−7.7587 **−1.5047 **
(−1.91)(−2.36)(−2.45)
Constant8.0461 ***4.3448 ***6.4394 ***
(43.75)(6.92)(52.76)
Observations360360360
R-squared0.9970.9350.994
Controls FEYESYESYES
Province FEYESYESYES
Year FEYESYESYES
r2_a0.9970.9240.993
F8.7261.18325.45
Note: robust t-statistics are in parentheses, *** p < 0.01, ** p < 0.05, * p < 0.1, the same as below.
Table 7. Moderating effect regression results.
Table 7. Moderating effect regression results.
(1)(2)
VariablesFPFP
LRM−9.7950 ***−2.2027
(−6.23)(−1.61)
LRMXDigTech1.0591 ***
(4.00)
DigTech−0.1739 **
(−3.10)
LRMXEgoverment 2.0152 **
(2.63)
Egoverment −0.2872 **
(−2.41)
Constant8.6553 ***7.5232 ***
(28.74)(26.14)
Observations360360
R-squared0.9940.994
Controls FEYESYES
Province FEYESYES
Year FEYESYES
r2_a0.9930.993
F1127335.1
Note: robust t-statistics are in parentheses, *** p < 0.01, ** p < 0.05, the same as below.
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Li, W.; Guo, G.; Gu, H.; Lai, S.; Duan, Y.; Li, C. Digital Economy as a Buffer: Alleviating the Adverse Effects of Land Resource Mismatch on Food Security. Land 2024, 13, 1742. https://doi.org/10.3390/land13111742

AMA Style

Li W, Guo G, Gu H, Lai S, Duan Y, Li C. Digital Economy as a Buffer: Alleviating the Adverse Effects of Land Resource Mismatch on Food Security. Land. 2024; 13(11):1742. https://doi.org/10.3390/land13111742

Chicago/Turabian Style

Li, Wenjie, Guanyu Guo, Huangying Gu, Shuhao Lai, Yuanjie Duan, and Chengming Li. 2024. "Digital Economy as a Buffer: Alleviating the Adverse Effects of Land Resource Mismatch on Food Security" Land 13, no. 11: 1742. https://doi.org/10.3390/land13111742

APA Style

Li, W., Guo, G., Gu, H., Lai, S., Duan, Y., & Li, C. (2024). Digital Economy as a Buffer: Alleviating the Adverse Effects of Land Resource Mismatch on Food Security. Land, 13(11), 1742. https://doi.org/10.3390/land13111742

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