Influence Mechanism of Data-Driven Dynamic Capability of Foreign Trade SMEs Based on the Perspective of Digital Intelligence Immunity
Abstract
1. Introduction
2. Theoretical Background
2.1. New Dynamic Capability Driven by Data
2.2. New Dynamic Capability of Foreign Trade SMEs
2.3. Tissue Resilience Theory
2.4. Tissue Immunity
2.4.1. Tissue Immune Theory
2.4.2. Characteristics and System Construction of Digital Intelligence Immune
- (1)
- Digital Intelligence Immune Characteristics
- (2)
- Digital Intelligence Immune System
2.5. New Dynamic Ability from the Perspective of Digital Intelligence Immunity
2.6. Literature Evaluation
3. Indicator Construction
4. New Dynamic Capability Evaluation Method for Foreign Trade SMEs
4.1. Research Method Framework
4.2. AHP Steps
- (1)
- Construct the judgment matrix Ak = , each aij represents the kth experts’ preference of the factor i over the factor j; i, j ∈ N. The fundamental relationship between the elements of the reciprocal matrix is (aij). (aji) = 1
- (2)
- Product the average judgment matrix B, [aij] with elements the average values of experts’ preferences, as follows:
- (3)
- Normalize each column element of the judgment matrix (the sum of the column elements is 1):
- (4)
- Sum the normalized matrix row by row:
- (5)
- Normalize wi′ to obtain the weight vector W:
- (6)
- Calculate the weight vector. By calculating the judgment matrix B, the eigenvector W corresponding to the maximum eigenroot λmax of this judgment matrix can be obtained:
- (7)
- Calculate the Consistency Index (CI):
- (8)
- Calculate the Consistency Ratio (CR): Generally, if CR < 0.1, the consistency of the judgment matrix is considered acceptable, meaning that although the judgment matrix may have slight inconsistency, it is insufficient to affect the rationality of the decision-making process. However, if CI > 0.1 or CR exceeds 0.1, and there is inconsistency among judgment matrices, the judgment matrix needs to be adjusted. Table 6 provides specific values of RI:
- (9)
- Calculate the total weight of the scheme layer relative to the target layer, that is, the total importance degree of each scheme to the ultimate goal.
- (10)
- Check the overall consistency of the total ranking results at each level to ensure the logical unity of judgments at all levels. Calculate the total ranking consistency index CI2, where CIj is the consistency index of the judgment matrix corresponding to the J-th factor of the criterion layer:
- (11)
- Calculate the total ranking average random consistency index RI2, where RIj is the random consistency index of the judgment matrix corresponding to the J-th factor of the criterion layer:
- (12)
- Calculate the total sorting consistency ratio. If CR2 < 0.1, the total sorting result is acceptable; otherwise, the relevant judgment matrix needs to be backtraced and corrected.
- (13)
- Sort according to the total weight of the scheme layer and select the scheme with the highest weight as the optimal decision result.
4.3. Fuzzy-DEMATEL Steps
- (1)
- If the k-th expert judges that the influence degree of factor I on factor J is as follows, the expression result of expert K can be expressed as:
- (2)
- Standardize the judgment matrix of the k-th expert:
- (3)
- Calculate the left and right standard values:
- (4)
- Calculate the comprehensive standardized value:
- (5)
- Calculate the clarity value:
- (6)
- Record the direct influence matrix E of the k-th expert and find the average value of the influence degree of I factor on J factor judged by k-th expert:
- (7)
- Construct the fuzzy direct influence matrix M according to eijk.
- (8)
- Calculate the normalization direct influence matrix G.
- (9)
- Determine the comprehensive influence matrix T.
- (10)
- The elements in matrix T are added row by row to form the influence degree fi, which represents the comprehensive influence value of the factor in that row on all other factors. The elements in matrix T are added by column to form the degree of influence gi, which represents the comprehensive influence value of the factors in this column on all other factors:
- (11)
- The sum of the degree of influence and the degree of being influenced is called the centrality ni, which indicates the position of the factor in the system and the extent of its effect. The difference between the degree of influence and the degree of being influenced is called the cause degree mi, which reflects the causal relationship among various influencing factors. If the cause degree is greater than 0, it indicates that the factor has a greater effect on other factors and is called a cause factor. If the cause degree is less than 0, it indicates that the factor is more affected by other factors and is called a result factor:
4.4. Calculation of Comprehensive Influence Degree Based on Fuzzy AHP-DEMATEL
4.5. fsQCA Steps
- (1)
- Case analysis and variable selection: fsQCA is an analysis method with both qualitative and quantitative requirements, which can obtain the complex causal mechanism of the combination of different factors to the results. Research usually uses literature analysis, field interviews with experts, and other methods to comprehensively sort out and define the outcome variables and conditional variables and collect data.
- (2)
- Data calibration, including direct calibration and indirect calibration. The fsQCA method is based on Boolean algebra, which requires the data to be distributed in the interval of [0, 1], but usually the collected original data does not meet this condition, so the original data corresponding to each antecedent condition and result condition is transformed into fuzzy membership degree. For this reason, the existing research often adopts direct calibration method, that is, setting three anchor points (complete membership, intersection, and complete non-membership) to generate the membership degree of the research object (i.e., Case) in each factor (i.e., Condition set) [46].
- (3)
- Necessity analysis (test necessary conditions): Before qualitative comparative analysis of fuzzy sets, it is necessary to test the necessity of antecedent variables. Consistency is usually used to measure the necessity of antecedent variables to results, that is, to what extent the results originate from the influence of antecedent variables. When the consistency is greater than or equal to 0.9, it can be judged that the antecedent variables are necessary conditions for results [47].
- (4)
- Construct truth tables: Truth tables are suitable tools for testing set relationships, and they shift the focus from empirical cases to conditional combinations. The truth table shows all possible combinations of causal conditions. There are usually three criteria to check whether a combination is relevant to the result: frequency, original consistency, and reduction rate of inconsistency. Among them, according to the total samples and their distribution among configurations, the critical value of configuration case frequency (1 is the minimum critical value) should be selected to keep at least 75% of observed cases, and the original consistency should be at least 0.8 [48].
- (5)
- Combinatorial analysis: The antecedent variables appearing in both the intermediate solution and the reduced solution are defined as “core conditions”, and the antecedent variables appearing only in the intermediate solution but not in the reduced solution are defined as “edge conditions”. They have different contributions to the results, and the core conditions have an important impact on the results, while the edge conditions only play an auxiliary role [49].
4.6. Comments on Theoritical Framework
5. Analysis of New Dynamic Capability Evaluation Mechanism of Foreign Trade SMEs
5.1. Determination of Weight Coefficient Based on AHP
5.2. Analysis of Influencing Factors Based on Fuzzy-DEMATEL
5.3. Comprehensive Influence Degree Calculation on Fuzzy AHP-DEMATEL
5.4. Conditional Configuration Analysis Based on fsQCA
5.4.1. Data Collection
5.4.2. Data Calibration
5.4.3. Necessity Test
5.4.4. Constructing Truth Table
5.4.5. Conditional Configuration Analysis
6. Conclusions
6.1. The Significance for Theories
- (1)
- This paper improves the research on the dynamic capabilities of enterprises in the context of the digital economy. Digital intelligence immunity can provide a suitable research perspective for the research on the new dynamic capabilities driven by enterprise data and can effectively make up for the deficiencies in the current research on the new dynamic capabilities driven by enterprise data. Firstly, the digital intelligence immune subsystem supports the implementation of dynamic capabilities. First, the digital and intelligent immune system expands the scope of immune surveillance and enhances the dynamic perception ability. Second, the digital intelligence immune system is conducive to optimizing the efficiency of resource integration and enhancing the ability of dynamic decision making. Thirdly, it is conducive to establishing an immune-driven “tissue repair” mechanism and enhancing the dynamic configuration capability. The perspective of digital intelligence immunity can provide theoretical support for the construction of a new dynamic capability index system driven by enterprise data. Secondly, the digital intelligence immune system is conducive to supporting the construction of the dynamic capability theoretical system. The three subsystems, namely the digital intelligence peripheral system, the digital intelligence dedicated system, and the digital intelligence central system, each perform their own duties and can automatically carry out non-specific processing, broad specific processing, or unique specific processing at different levels based on the degree of opportunity and crisis handling, providing framework support for the construction of new dynamic capabilities. Finally, the immune response logic of digital intelligence immunity and the circular interaction mode of routine immune responses are helpful to clarify the internal mechanism of enterprise data driven from the perspective of dynamic capabilities and improve the re-response efficiency of the system to the same situation by constructing the trial-and-error–analysis–learning–memory path.
- (2)
- This article deepens the theoretical research on tissue immunity and has significant academic and practical significance. Theoretically, four major characteristics of digital intelligence immunity can be summarized as follows: intelligence, ecology, integrity, and interactivity. Intelligence achieves data-driven defense through technologies such as AI. Ecology breaks through organizational boundaries to build symbiotic networks. Integrity strengthens internal collaboration with the help of digital technology. Interactivity actively outputs influence through digital intelligence interconnection. In practice, the traditional abstract concept of tissue immunity based on biological metaphors has been transformed into a system framework that is technologically implementable, ecologically scalable, and capable of evolving. A digital and intelligent immune system including central, specialized, and peripheral systems has been constructed, and the hierarchical response and circular evolution mechanisms have been clearly defined. This provides more operational theoretical tools for organizations to deal with uncertainties in the digital economy era, promotes the research on organizational immunity from theoretical exploration to engineering construction, and helps organizations achieve resilient development in a dynamic environment.
6.2. The Significance for Foreign Trade SMEs
- (1)
- B1 (Digital Intelligence Management and Analysis), B4 (Digital Intelligence Supervision and Early Warning), and B6 (Digital Intelligence Ecosystem) have an important impact on the new dynamic capability driven by data of foreign trade SMEs. Fuzzy AHP-DEMATEL analysis shows that B1 (digital intelligence management and analysis), B4 (digital intelligence supervision and early warning), and B6 (digital intelligence ecosystem) have a significant impact on the formation of new data-driven dynamic capabilities of foreign trade SMEs. FsQCA analysis also shows that B1 (Digital Intelligence Management and Analysis), B4 (Digital Intelligence Supervision and Early Warning), and B6 (Digital Intelligence Ecosystem) are the necessary conditions for the formation of digital dynamic capabilities of foreign trade SMEs and the core conditions in multiple paths. Therefore, in order to improve their new data-driven dynamic capability level, foreign trade SMEs must grasp the construction of these three core links.
- (2)
- B3 (digital talents) has a strong influence on the new dynamic capability driven by data of foreign trade SMEs and is an important guarantee for the formation of high-level new dynamic capability of foreign trade SMEs. Fuzzy AHP-DEMATEL analysis shows that B3 (digital intelligence talents) has a strong influence on new dynamic ability. FsQCA analysis shows that B3 (digital intelligence talents) has a high coverage rate, and in path analysis, it can be found that B3 (digital intelligence talents) can play a certain role in the formation of high dynamic ability, such as B2 (digital intelligence memory), B5 (digital intelligence communication and tracking), B9 (employee quality), B10 (rules and regulations), and B11 (digital intelligence culture). Therefore, in order to improve their new dynamic ability level, foreign trade SMEs should attach importance to the training of digital talents, actively improve the talent incentive system, and speed up the introduction of digital talents.
- (3)
- B8 (Digital foundation) is an important foundation for the formation of new dynamic capabilities driven by high-level data of foreign trade SMEs. Fuzzy AHP-DEMATEL analysis shows that B8 (digital foundation) has a medium influence on the new dynamic capability of enterprises, but fsQCA analysis shows that B8 (digital foundation) is not only the necessary result of the formation of high-level new dynamic capability but also the core condition of multiple paths. Therefore, in order to strengthen the new dynamic capacity building, foreign trade SMEs should actively apply the digital foundation.
- (4)
- The formation of new dynamic capability driven by high data of foreign trade SMEs is the result of multi-factor linkage. Fuzzy AHP-DEMATEL analysis obtains the net influence effect of each variable on the new dynamic capability of foreign trade SMEs in the model composed of specific factors, which provides an intuitive understanding for understanding the influence effect of each antecedent variable on the new dynamic capability. The fsQCA analysis results show that the antecedent conditions for the formation of high-level new dynamic capabilities of foreign trade SMEs are all composed of two or more antecedent conditions. Through the necessity test (consistency ≥ 0.9), it is found that a single condition (such as only B1 or B6) cannot independently trigger high-level capabilities. When any one of B1, B4, and B6 is missing, the configurational consistency drops sharply to below 0.5. This finding breaks through the traditional linear causal hypothesis, confirming that dynamic capabilities in the digital economy are the result of the networked interlocking of soft and hard elements. Hard conditions (such as B6 ecological resources) provide the material foundation, while soft conditions (such as B3 talent cognition) activate factor synergy. Both are precipitated into reusable organizational routines through the regularization of the digital foundation (B8). This method effectively makes up for the deficiencies of the fuzzy AHP-DEMATEL analysis method, indicating that to build high-level data-driven new dynamic capabilities, enterprises should not be limited to optimizing single elements but should focus on the linkage and matching of multiple forces.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
- Glonti, V.; Manvelidze, R.; Surmanidze, I. The Contribution of SME to Regional Economic Development: On Example of Adjara Autonomous Republic. Eur. J. Sustain. Dev. 2021, 10, 513. [Google Scholar] [CrossRef]
- Fang, T.M.; Ahmad, N.H.; Halim, H.A.; Iqbal, Q.; Ramayah, T. Pathway towards SME Competitiveness: Digital Capability and Digital Business Model Innovation. Technol. Soc. 2024, 79, 102728. [Google Scholar] [CrossRef]
- China Export & Credit Insurance Corporation’s. 2025 China SMEs Foreign Trade Export Risk Index (SMERI) Report. Available online: https://g.h5gdvip.com/p/emjwrfdv (accessed on 20 July 2025).
- 2024 Report on Digital Transformation of Small and Medium-sized Enterprises in China. Available online: https://economy.gmw.cn/2024-06/21/content_37393256.htm (accessed on 20 July 2025).
- Chen, W.R.; Wang, J.X. Platform-dependent Upgrade: Digital Transformation Strategy of Complementors in Platform-based Ecosystem. J. Manag. World 2021, 37, 195–214. [Google Scholar]
- Ghosh, S.; Hughes, M.; Hodgkinson, I.; Hughes, P. Digital Transformation of Industrial Businesses: A Dynamic Capability Approach. Technovation 2022, 113, 102414. [Google Scholar] [CrossRef]
- Wang, J.; Lu, Y.; Fan, S.; Hu, P.; Wang, B. How to survive in the age of artificial intelligence? Exploring the intelligent transformations of SMEs in central China. Int. J. Emerg. Mark. 2022, 17, 1143–1162. [Google Scholar] [CrossRef]
- Ballerini, J.; Herhausen, D.; Ferraris, A. How commitment and platform adoption drive the e-commerce performance of SMEs: A mixed-method inquiry into e-commerce affordances. Int. J. Inf. Manag. 2023, 70, 102649. [Google Scholar] [CrossRef]
- Zhu, F.; Shi, Q.; Baležentis, T. The impact of e-commerce and R&D on firm-level production in China: Evidence from manufacturing sector. Struct. Change Econ. Dyn. 2023, 65, 101–110. [Google Scholar]
- Teece, D.J. Explicating Dynamic Capabilities: The Nature and Microfoundations of (Sustainable) Enterprise Performance. Strateg. Manag. J. 2007, 28, 1319–1350. [Google Scholar] [CrossRef]
- Eisenhardt, K.M.; Martin, J.A. Dynamic Capabilities: What Are They? Strateg. Manag. J. 2000, 21, 1105–1121. [Google Scholar] [CrossRef]
- McAfee, A.; Brynjolfsson, E.; Davenport, T.H. Big Data: The Management Revolution. Harv. Bus. Rev. 2012, 90, 60–68. [Google Scholar] [PubMed]
- Brynjolfsson, E.; Hitt, L.M.; Kim, H.H. Strength in Numbers: How Does Data-Driven Decision-Making Affect Firm Performance? SSRN Electron. J. 2011, 1819486. [Google Scholar]
- Warner, K.S.R.; Wäger, M. Building Dynamic Capabilities for Digital Transformation: An Ongoing Process of Strategic Renewal. Long Range Plan. 2019, 52, 326–349. [Google Scholar] [CrossRef]
- Chen, Y.; Li, J.; Zhang, J. Digitalisation, Data-Driven Dynamic Capabilities and Responsible Innovation: An Empirical Study of SMEs in China. Asia Pac. J. Manag. 2024, 41, 1211–1251. [Google Scholar] [CrossRef]
- Canhoto, A.I.; Quinton, S.; Pera, R.; Molinillo, S.; Simkin, L. Digital strategy aligning in SMEs: A dynamic capabilities perspective. J. Strateg. Inf. Syst. 2021, 30, 101682. [Google Scholar] [CrossRef]
- Koch, T.; Windsperger, J. Seeing through the Network: Competitive Advantage in the Digital Economy. J. Organ. Des. 2017, 6, 6. [Google Scholar] [CrossRef]
- Chen, C.L.; Lin, Y.C.; Chen, W.H.; Chao, C.F.; Pandia, H. Role of Government to Enhance Digital Transformation in Small Service Business. Sustainability 2021, 13, 1028. [Google Scholar] [CrossRef]
- De la Torre, J.; Moxon, R.W. Introduction to the Symposium E-Commerce and Global Business: The Impact of the Information and Communication Technology Revolution on the Conduct of International Business. J. Int. Bus. Stud. 2001, 32, 617–639. [Google Scholar] [CrossRef]
- Nambisan, S.; Zahra, S.A.; Luo, Y. Global Platforms and Ecosystems: Implications for International Business Theories. J. Int. Bus. Stud. 2019, 50, 1464–1486. [Google Scholar] [CrossRef]
- Yoon, B.; Jeong, Y.; Lee, K.; Lee, S. A Systematic Approach to Prioritizing R&D Projects Based on Customer-Perceived Value Using Opinion Mining. Technovation 2020, 98, 102164. [Google Scholar]
- Coviello, N.; Kano, L.; Liesch, P.W. Adapting the Uppsala Model to a Modern World: Macro-Context and Microfoundations. J. Int. Bus. Stud. 2017, 48, 1151–1164. [Google Scholar] [CrossRef]
- Kim, D.; Cavusgil, E. Antecedents and Outcomes of Digital Platform Risk for International New Ventures’ Internationalization. J. World Bus. 2020, 55, 101021. [Google Scholar] [CrossRef]
- Antràs, P. Conceptual Aspects of Global Value Chains. World Bank Econ. Rev. 2020, 34, 551–574. [Google Scholar] [CrossRef]
- Shah, N.; Zehri, A.W.; Saraih, U.N.; Abdelwahed, N.A.A.; Soomro, B.A. The Role of Digital Technology and Digital Innovation towards Firm Performance in a Digital Economy. Kybernetes 2024, 53, 620–644. [Google Scholar] [CrossRef]
- Liu, Y.; Hu, W.; Luo, K.; Guo, Y.; Wang, Z. How Does Digital Trade Promote and Reallocate the Export Technology Complexity of the Manufacturing Industry? Evidence from 30 Chinese Provinces, 2011–2020. PLoS ONE 2023, 18, e0291464. [Google Scholar] [CrossRef] [PubMed]
- Ni, Q.; Zhao, S.-m.; Du, P.-c. Formation Mechanism and Improvement Path of Digitalized Immune Capacity for Enterprises in the Context of Normal Crisis. Reform 2023, 8, 111–123. [Google Scholar]
- Wang, Y. Preliminary Study on Tissue Immunity. Sci. Sci. Manag. Sci. Technol. 2006, 6, 133–139. [Google Scholar]
- Zhao, J. Mechanism of Organizational Cognition Affecting Immune Behavior and Organizational Health—A Case Study of A Enterprise. Econ. Manag. 2013, 35, 54–64. [Google Scholar]
- Jiang, T.; Xiong, W. Research on Multi-Level Distributed Tissue Immune Response Model Based on Comprehensive Perspective. Res. Sci. Technol. Manag. 2017, 37, 239–244. [Google Scholar]
- Lv, P.; Wang, Y. Research on Enterprise Adaptability from the Perspective of Organizational Immunity. Sci. Res. Manag. 2008, 1, 164–171. [Google Scholar]
- Lv, P.; Wang, Y. Study on the Behavior and Mechanism of Organizational Immunology. J. Manag. 2009, 6, 607–614. [Google Scholar]
- Jiang, T.; Xiong, W. Redefinition of the Evolution of Organizational Conventions: From the Perspective of Tissue Immunity. J. Zhejiang Univ. Hum. Soc. Sci. Ed. 2014, 44, 141–152. [Google Scholar]
- Ni, Q.; Zhang, L.; Zhao, S.M.; Du, P.C.; Chen, Y. A Theoretical Construction Study on the Influence of Organizational DualImmunity on Adaptive Performance in the Post-Epidemic Period. J. Manag. 2023, 20, 1617–1627. [Google Scholar]
- Wamba, S.F.; Gunasekaran, A.; Akter, S.; Ren, S.J.F.; Dubey, R.; Childe, S.J. Big Data Analytics and Firm Performance: Effects of Dynamic Capabilities. J. Bus. Res. 2017, 70, 356–365. [Google Scholar] [CrossRef]
- Pisar, P.; Bilkova, D. Controlling as a Tool for SME Management with an Emphasis on Innovations in the Context of Industry 4.0. Equilib. Q. J. Econ. Econ. Policy 2019, 14, 763–785. [Google Scholar] [CrossRef]
- Banker, R.D.; Li, X.; Maex, S.A.; Shi, W. The Audit Implications of Cloud Computing. Account. Horiz. 2020, 34, 1–31. [Google Scholar] [CrossRef]
- Sajko, M.; Boone, C.; Buyl, T. CEO Greed, Corporate Social Responsibility, and Organizational Resilience to Systemic Shocks. J. Manag. 2021, 47, 957–992. [Google Scholar] [CrossRef]
- General Office of the Ministry of Industry and Information Technology. SMEs Digital Level Evaluation Indicators 2024 Edition. Available online: https://www.gov.cn/zhengce/zhengceku/202409/content_6973446.htm (accessed on 20 July 2025).
- Ortiz-Barrios, M.A.; Herrera-Fontalvo, Z.; Rúa-Muñoz, J.; Ojeda-Gutiérrez, S.; De Felice, F.; Petrillo, A. An integrated approach to evaluate the risk of adverse events in hospital sector. Manag. Decis. 2018, 56, 2187–2224. [Google Scholar] [CrossRef]
- Morgan, S.L. Redesigning Social Inquiry: Fuzzy Sets and Beyond. Soc. Forces 2010, 88, 1936–1938. [Google Scholar] [CrossRef]
- Saaty, L.T. Decision making—The Analytic Hierarchy and Network Processes (AHP/ANP). J. Syst. Sci. Syst. Eng. 2004, 13, 1–35. [Google Scholar] [CrossRef]
- Si, S.L.; You, X.Y.; Liu, H.C.; Zhang, P. DEMATEL technique: A systematic review of the state-of-the-art literature on methodologies and applications. Math. Probl. Eng. 2018, 1, 3696457. [Google Scholar] [CrossRef]
- Medalla, M.E.F.; Yamagishi, K.D.; Tiu, A.M.C.; Tanaid, R.A.B.; Abellana, D.P.M.; Caballes, S.A.A.; Jabilles, E.M.Y.; Selerio, E.F.; Bongo, M.F.; Ocampo, L.A. Relationship mapping of consumer buying behavior antecedents of secondhand clothing with fuzzy DEMATEL. J. Manag. Anal. 2021, 8, 530–568. [Google Scholar] [CrossRef]
- Ragin, C.C. The Comparative Method: Moving Beyond Qualitative and Quantitative Strategies; University of California Press: Berkeley, CA, USA, 2014. [Google Scholar]
- Olan, F.; Liu, S.; Neaga, I.; Chen, H.; Nakpodia, F. How Cultural Impact on Knowledge Sharing Contributes to Organizational Performance: Using the fsQCA Approach. J. Bus. Res. 2019, 94, 313–319. [Google Scholar] [CrossRef]
- Park, Y.; El Sawy, O.A.; Fiss, P. The Role of Business Intelligence and Communication Technologies in Organizational Agility: A Configurational Approach. J. Assoc. Inf. Syst. 2017, 18, 1. [Google Scholar] [CrossRef]
- Thomann, E.; Maggetti, M. Designing Research with Qualitative Comparative Analysis (QCA): Approaches, Challenges, and Tools. Sociol. Methods Res. 2020, 49, 356–386. [Google Scholar] [CrossRef]
- 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]
- Shahi, C.; Sinha, M. Digital transformation: Challenges faced by organizations and their potential solutions. Int. J. Innov. Sci. 2020, 13, 17–33. [Google Scholar] [CrossRef]
Stage | Action | Representative Document |
---|---|---|
Perception/search | Digital intelligence transformation enables enterprises to perceive the dynamic and complex international competitive environment with higher precision | Koch [17] |
Use the “Internet + government Service” platform to improve the ability to obtain and interpret enterprise policy information | Chen [18] | |
The use of digital platform improves the availability of information such as local market, transaction history, and behavior of transaction objects, and reduces the uncertainty of cross-border transactions | De [19] | |
The use of digital products is beneficial for enterprises to interact with suppliers and customers, and helps enterprises track, record, and master consumers’ behaviors and preferences in time | Nambisan [20] | |
Decisions/choices | Using cloud computing and big data to process foreign consumer behavior data and analyze their behavior characteristics | Yoon [21] |
Using digital marketing to reduce overseas sales costs and export risks | Coviello [22] | |
Refactoring/configuration | The construction of cross-border digital platform breaks the limitation of geographical and cultural distance | Kim [23] |
Adapt to the host country environment better | Antra S [24] | |
Promote the transformation of digital, intelligent, and precise digital corporate culture | Shah [25] | |
Enhancing the position of enterprises in the value chain | Liu [26] |
Research Perspective | Tissue Immunity | Representative Document |
---|---|---|
System structure | Full-time immunization organizations and part-time immunization organizations | Wan Yihua [28] |
Central immune system, professional immune system, and peripheral immune system | Zhao Jianbo [29] | |
Practical artifacts, organizational operating practices, and enterprise strategic dynamic capability system | Jiang Tao [30] | |
Response mechanism | There are two lines of defense of non-specific immunity and specific immunity, and four stages are recognition, feedback, variation, selection, and memory | Wang Yihua [28] |
It includes three dimensions: organizational cognition, organizational defense, and organizational memory | Lv Ping [31] | |
There are two dimensions of specific immunity and non-specific immunity. Non-atopic immunity includes organizational structure, institutional rules, and organizational culture, while specific immunity includes organizational surveillance, organizational defense, and organizational memory | Lv Ping [32] | |
Routine–cyclic interaction mode of immune response | Jiang Tao [30] | |
Automatic implementation of non-specific, extensive-specific, and unique-specific responses at corresponding levels according to dissident intensity | Jiang Tao [33] | |
It makes up for the vacancy that the traditional immune system is defaulted to be a system that can automatically transmit information and analyze causality and emphasizes embedding safety construction content directly in design and production | Ni Qing [27] | |
Systematic elements | It has the dual characteristics of psychological immunity and behavioral immunity | Ni Qing [34] |
Immune Subsystem | Immune Pathway | Functions | Content |
---|---|---|---|
Immune central system | Unique-specific immunity | Strategic planning, learning, and memory | Supervision, defense, memory |
Full-time immunization system | Extended-specific immunity | Directly incorporate safety compliance construction into the digital system | |
Immune peripheral system | Non-specific immunity | Complete self-control and feedback | Structure, system, culture |
First-Class Index | Secondary Index | Source of Literature |
---|---|---|
A1 Digital Intelligence Central System | B1 Digital Intelligence Management and Analysis | Yoon [21] |
B2 Digital Intelligence Memory | Shah [25] | |
B3 Digital Intelligence Talents | Pisar [35] | |
A2 Digital Intelligent Full-time System | B4 Digital Intelligence Communication and Tracking | Wamba [36] |
B5 Digital Intelligence Supervision and Early Warning | Banker [37] | |
B6 Digital Intelligence Ecosystem | Nambisan [20] | |
B7 Digital Intelligence Output | Sajko [38] | |
A3 Digital Intelligence Autonomous System | B8 Digital foundation | Pisar [36] |
B9 Staff Quality | Wang [28] | |
B10 Rules and Regulations | Wang [28] | |
B11 Digital Intelligence Culture | Wang [28] |
Scale | Meaning |
---|---|
1 | Equally important |
2 | Between equally important and slightly important |
3 | Slightly important |
4 | Between slightly important and more important |
5 | Moderate important |
6 | Between more importance and strong importance |
7 | Strong important |
8 | Between strong importance and extreme importance |
9 | Extremely important |
N | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 |
---|---|---|---|---|---|---|---|---|
RI | 0.58 | 0.89 | 1.12 | 1.26 | 1.36 | 1.41 | 1.46 | 1.49 |
Scale | Meaning | Semantic Transformation () |
---|---|---|
0 | No impact | (0.0, 0.1, 0.3) |
1 | The impact is minimal | (0.1, 0.3, 0.5) |
2 | Have little impact | (0.3, 0.5, 0.7) |
3 | Have a great influence | (0.5, 0.7, 0.9) |
4 | Have a great impact | (0.7, 0.9, 1.0) |
Project | Frequency | Percentage | |
---|---|---|---|
Gender | Male | 14 | 56% |
Female | 11 | 44% | |
Professionalism | Graduate student | 2 | 8% |
Doctoral student | 7 | 28% | |
Professor | 11 | 44% | |
Industry expert | 5 | 20% |
Criterion Layer | Scheme Layer | CR = 0.0749 | ||||
---|---|---|---|---|---|---|
Name | Weight | CR | Name | Weight | CR | |
A1 | 0.2923 | 0.0327 | hB1 | 0.6115 | 0.0327 | 0.1787 |
hB2 | 0.0963 | 0.0282 | ||||
hB3 | 0.2922 | 0.0854 | ||||
A2 | 0.6120 | hB4 | 0.5245 | 0.0900 | 0.3210 | |
hB5 | 0.1135 | 0.0695 | ||||
hB6 | 0.3208 | 0.1963 | ||||
hB7 | 0.0413 | 0.0253 | ||||
A3 | 0.0957 | hB8 | 0.5513 | 0.0611 | 0.0528 | |
hB9 | 0.2243 | 0.0215 | ||||
hB10 | 0.0923 | 0.0088 | ||||
hB11 | 0.1320 | 0.0126 |
Serial Number | B1 | B2 | B3 | B4 | B5 | B6 | B7 | B8 | B9 | B10 | B11 |
---|---|---|---|---|---|---|---|---|---|---|---|
B1 | 0.1217 | 0.7015 | 0.5149 | 0.3282 | 0.5299 | 0.3344 | 0.8783 | 0.3132 | 0.5349 | 0.7086 | 0.7027 |
B2 | 0.1875 | 0.1217 | 0.3132 | 0.1809 | 0.3046 | 0.1217 | 0.4851 | 0.2832 | 0.3055 | 0.3055 | 0.3129 |
B3 | 0.3420 | 0.5075 | 0.1217 | 0.3064 | 0.2976 | 0.1875 | 0.7095 | 0.3570 | 0.3129 | 0.5224 | 0.5149 |
B4 | 0.5075 | 0.7374 | 0.4925 | 0.1217 | 0.7089 | 0.3120 | 0.8783 | 0.5149 | 0.7077 | 0.8059 | 0.7024 |
B5 | 0.1217 | 0.2902 | 0.3123 | 0.1217 | 0.1217 | 0.1217 | 0.7162 | 0.3055 | 0.3129 | 0.5149 | 0.4851 |
B6 | 0.2979 | 0.6810 | 0.4851 | 0.2902 | 0.4851 | 0.1217 | 0.7021 | 0.5075 | 0.7086 | 0.7021 | 0.6951 |
B7 | 0.1217 | 0.2911 | 0.1217 | 0.1217 | 0.1217 | 0.1344 | 0.1217 | 0.1217 | 0.3052 | 0.2979 | 0.3420 |
B8 | 0.3200 | 0.5149 | 0.3052 | 0.3123 | 0.3417 | 0.3190 | 0.7024 | 0.1217 | 0.4925 | 0.7021 | 0.4376 |
B9 | 0.2994 | 0.3135 | 0.2902 | 0.1477 | 0.3078 | 0.1742 | 0.5149 | 0.1217 | 0.1217 | 0.4925 | 0.3126 |
B10 | 0.1217 | 0.3273 | 0.1217 | 0.1742 | 0.1217 | 0.1293 | 0.2767 | 0.1217 | 0.3420 | 0.1217 | 0.3052 |
B11 | 0.1217 | 0.2982 | 0.1217 | 0.1217 | 0.3049 | 0.1477 | 0.2832 | 0.1217 | 0.3126 | 0.2976 | 0.1217 |
Serial Number | Sort | Sort | Sort | Sort | Factor Attribute | ||||
---|---|---|---|---|---|---|---|---|---|
B1 | 1.8099 | 3 | 0.8331 | 9 | 2.6430 | 3 | 0.9768 | 3 | Cause factor |
B2 | 0.9607 | 8 | 1.5400 | 4 | 2.5007 | 5 | −0.5793 | 8 | Outcome factor |
B3 | 1.3605 | 5 | 1.0253 | 7 | 2.3858 | 9 | 0.3352 | 5 | Cause factor |
B4 | 2.0850 | 1 | 0.7354 | 10 | 2.8203 | 1 | 1.3496 | 1 | Cause factor |
B5 | 1.0683 | 6 | 1.1661 | 6 | 2.2344 | 11 | −0.0978 | 6 | Outcome factor |
B6 | 1.8229 | 2 | 0.6930 | 11 | 2.5159 | 4 | 1.1299 | 2 | Cause factor |
B7 | 0.6824 | 11 | 2.0063 | 1 | 2.6887 | 2 | −1.3238 | 11 | Outcome factor |
B8 | 1.4843 | 4 | 0.9216 | 8 | 2.4059 | 8 | 0.5628 | 4 | Cause factor |
B9 | 1.0052 | 7 | 1.4505 | 5 | 2.4557 | 7 | −0.4453 | 7 | Outcome factor |
B10 | 0.7114 | 10 | 1.7561 | 2 | 2.4675 | 6 | −1.0447 | 10 | Outcome factor |
B11 | 0.7339 | 9 | 1.5972 | 3 | 2.3311 | 10 | −0.8633 | 9 | Outcome factor |
Factors | Rank | |||
---|---|---|---|---|
B1 | 0.1787 | 2.6430 | 0.1817 | 3 |
B2 | 0.0282 | 2.5007 | 0.0271 | 7 |
B3 | 0.0854 | 2.3858 | 0.0784 | 4 |
B4 | 0.3210 | 2.8203 | 0.3482 | 1 |
B5 | 0.0695 | 2.2344 | 0.0597 | 5 |
B6 | 0.1963 | 2.5159 | 0.1900 | 2 |
B7 | 0.0253 | 2.6887 | 0.0262 | 8 |
B8 | 0.0528 | 2.4059 | 0.0489 | 6 |
B9 | 0.0215 | 2.4557 | 0.0203 | 9 |
B10 | 0.0088 | 2.4675 | 0.0084 | 11 |
B11 | 0.0126 | 2.3311 | 0.0113 | 10 |
B1 | B2 | B3 | B4 | B5 | B6 | B7 | B8 | B9 | B10 | B11 | |
---|---|---|---|---|---|---|---|---|---|---|---|
Basic score | 5 | 5 | 5 | 5 | 5 | 5 | 5 | 5 | 5 | 5 | 5 |
Significant improvement | 7 | 4 | 4 | 9 | 4 | 8 | 3 | 6 | 4 | 3 | 4 |
Significantly reduced | 4 | 5 | 3 | 4 | 5 | 4 | 4 | 3 | 4 | 4 | 3 |
Conditional Variable | Ambiguity Correction | Descriptive Statistics | |||
---|---|---|---|---|---|
Completely Subordinate to | Crossing Point | Completely Unaffiliated | Mean Value | Standard Deviation | |
B1 | 7.173 | 5.016 | 2.860 | 5.016 | 2.156 |
B2 | 4.645 | 3.852 | 3.060 | 3.852 | 0.792 |
B3 | 4.416 | 3.262 | 2.109 | 3.262 | 1.153 |
B4 | 8.492 | 4.902 | 1.311 | 4.902 | 3.590 |
B5 | 5.233 | 4.623 | 4.013 | 4.623 | 0.610 |
B6 | 7.846 | 4.951 | 2.056 | 4.951 | 2.895 |
B7 | 3.755 | 2.787 | 1.819 | 2.787 | 0.968 |
B8 | 6.165 | 4.557 | 2.950 | 4.557 | 1.608 |
B9 | 5.345 | 4.803 | 4.261 | 4.803 | 0.542 |
B10 | 4.225 | 3.148 | 2.070 | 3.148 | 1.078 |
B11 | 4.394 | 3.590 | 2.786 | 3.590 | 0.804 |
Conditional Variable | Consistency of Result Variables | |
---|---|---|
Significant Improvement | Significantly Reduced | |
B1 | 0.925 | 0.090 |
~B1 | 0.075 | 0.910 |
B2 | 0.497 | 0.532 |
~B2 | 0.503 | 0.468 |
B3 | 0.810 | 0.184 |
~B3 | 0.190 | 0.816 |
B4 | 0.942 | 0.071 |
~B4 | 0.058 | 0.929 |
B5 | 0.596 | 0.514 |
~B5 | 0.404 | 0.486 |
B6 | 0.936 | 0.073 |
~B6 | 0.064 | 0.927 |
B7 | 0.235 | 0.730 |
~B7 | 0.765 | 0.270 |
B8 | 0.910 | 0.112 |
~B8 | 0.090 | 0.888 |
B9 | 0.537 | 0.607 |
~B9 | 0.463 | 0.393 |
B10 | 0.174 | 0.815 |
~B10 | 0.826 | 0.185 |
B11 | 0.362 | 0.679 |
~B11 | 0.638 | 0.321 |
Conditional Variable | Configuration 1 | Configuration 2 | Configuration 3 | Configuration 4 | Configuration 5 | Comprehensive Weight | Rank |
---|---|---|---|---|---|---|---|
B1 Data Management and Analysis | ◎ | ◎ | ● | ● | ● | 0.1916 | 3 |
B2 Digital Intelligence Memory | ◎ | ⊗ | ◎ | 0.0307 | 7 | ||
B3 Digital Talents | ● | ● | ● | ● | ● | 0.0978 | 4 |
B4 Digital Intelligence Supervision and Early Warning | ◎ | ◎ | ● | ● | ● | 0.2790 | 2 |
B5 Digital Intelligence Communication and Tracking | ◎ | ⊗ | ⨯ | ◎ | 0.0768 | 5 | |
B6 Digital Intelligence Ecosystem | ◎ | ◎ | ● | ● | ● | 0.2050 | 1 |
B7 Digital Intelligence Output | ⨯ | ⨯ | ● | ● | 0.0223 | 9 | |
B8 Digital Foundation | ◎ | ◎ | ● | ● | ● | 0.0478 | 6 |
B9 Staff Quality | ◎ | ⊗ | ◎ | ◎ | 0.0238 | 8 | |
B10 Rules and Regulations | ⨯ | ⨯ | ⨯ | ⊗ | ⊗ | 0.0115 | 10 |
B11 Digital Intelligence Culture | ⊗ | ⊗ | ⊗ | 0.0136 | 11 |
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Zhou, X.; Qi, M.; Tian, Y.; Ye, P. Influence Mechanism of Data-Driven Dynamic Capability of Foreign Trade SMEs Based on the Perspective of Digital Intelligence Immunity. Sustainability 2025, 17, 6750. https://doi.org/10.3390/su17156750
Zhou X, Qi M, Tian Y, Ye P. Influence Mechanism of Data-Driven Dynamic Capability of Foreign Trade SMEs Based on the Perspective of Digital Intelligence Immunity. Sustainability. 2025; 17(15):6750. https://doi.org/10.3390/su17156750
Chicago/Turabian StyleZhou, Xi, Minya Qi, Yunong Tian, and Peijie Ye. 2025. "Influence Mechanism of Data-Driven Dynamic Capability of Foreign Trade SMEs Based on the Perspective of Digital Intelligence Immunity" Sustainability 17, no. 15: 6750. https://doi.org/10.3390/su17156750
APA StyleZhou, X., Qi, M., Tian, Y., & Ye, P. (2025). Influence Mechanism of Data-Driven Dynamic Capability of Foreign Trade SMEs Based on the Perspective of Digital Intelligence Immunity. Sustainability, 17(15), 6750. https://doi.org/10.3390/su17156750