Effect of Social Sustainability on Supply Chain Resilience Before, During, and After the COVID-19 Pandemic in Mexico: A Partial Least Squares Structural Equation Modeling and Evolutionary Fuzzy Knowledge Transfer Approach
Abstract
:1. Introduction
Pandemic Time/Research (1) | Method/Technique (2) | Association SSF and SCR | Approach to Association |
---|---|---|---|
I. PRE-PANDEMIC. Plateau and Contraction. 3rd quarter of 2018 to the 4th quarter of 2019. | |||
Alghababsheh et al. [13]. (Data collection October 2018 and July 2019). | Empirical statistical non-parametric/PLS-SEM. | Internal social performance is negatively related to supplier operational risk in the apparel sector in Jordan. | SSFs as a cause of SCR. |
López and Ruiz-Benítez [6] (Received 27 July 2018). | Empirical mathematical/Interpretative Structural Modeling (ISM). | Sustainable social performance as an effect of resilience based on lean practices in the aerospace supply chain. | SSFs as an effect of SCR. |
El Amrani et al. [29] (Received 20 December 2019). | Empirical mathematical/Multi Echelon Bayesian. | Optimizing sustainable social resilience management in the biomass supply chain. | Optimization of SSFs. |
II. IN-PANDEMIC. Crisis Global Trade. 1st quarter to 3rd quarter 2020. | |||
Rai et al. [2] (Received 15 August 2020). | Empirical statistical -parametric/CBSEM. | Aspects of resilience positively and directly impacted social sustainability factors in Indian multi-sector supply chain cases during the COVID-19 crisis. | SSFs as an effect of SCR. |
Hervani et al. [20] (Received 30 April 2021). | Conceptual analytical/abductive approach. | Socially sustainable performance coexists with resilient performance in supply chains from the perspective of environmental asset valuation. | SSFs and SCR as simultaneous effect. |
Reyna-Castillo et al. [3] (Received 22 June 2022). | Empirical statistical and mathematical/PLS-SEM and fuzzy genetics. | Social sustainability had predictive power for supply chain resilience performance in the COVID-19 pandemic, with representative cases from Mexico and Chile. | SSFs as the cause of SCR. |
Silva et al. [4] (Data collection October 2020–April 2021). | Empirical case studies/Hermeneutics. | Social sustainability (supplier inclusion) favored supply chain resilience in a cosmetics industry case during COVID-19. | SSFs as the cause of SCR. |
Michel-Villarreal [25] (Data collection July to December 2020). | Empirical case studies/Hermeneutics. | Social sustainability practices, such as solidarity and commitment, impacted resilience capacities in short food supply chains in the cases of Mexico in COVID-19. | SSFs as the cause of SCR. |
Rajak et al. [24] (Received 1 December 2020). | Empirical mathematical/BWM-QFD. | Healthcare through social distancing was a critical success factor that decreased risk in a multi-sector supply chain case during COVID-19. | SSFs as the cause of SCR. |
Silva et al. [23] (Data collection April 2020 and March 2022). | Empirical case studies/Hermeneutics | Micro-foundations of supplier sustainability were capabilities that developed anticipatory capacity in the supply chain of the coffee sector in Brazil during the COVID-19 pandemic. | SSFs as the cause of SCR. |
III. POST-PANDEMIC. Recovery. 4th quarter 2020 to 4th quarter 2022. | |||
Majumdar et al. [30] (Received 10 September 2021). | Empirical statistical and mathematical/TrIFTOPSIS. | Primary social sustainability compliance has relevant attributes to optimize resilience. | Optimization of SSFs. |
Ghobakhloo et al. [26] (Received 14 April 2022). | Empirical and mathematical/Interpretive Structural Modeling (ISM). | Industry 5.0 objectives favor human centricity and, in turn, supply chain adaptability. | SSFs as a cause of SCR. |
Singh et al. [27] (Received 5 June 2022). | Empirical statistical and mathematical/fuzzy BWM. | Supply chain resilience strategies significantly impact social sustainability attributes in the Indian automotive manufacturing sector. | SSFs as an effect of SCR. |
Liu et al. [1] (Received 30 April 2022). | Empirical statistical and mathematical/fuzzy Kano. | The execution of social resilience and sustainability strategies is sensitive to budgetary constraints within sustainable supply chains in the post-COVID-19 era. | SSFs and SCR with simultaneous coexistence. |
Boz et al. [31] (Received 24 September 2022). | Empirical statistical and mathematical/fuzzy MCDM. | Social factors are a roadmap for developing sustainable and resilient healthcare supply chains in the post-COVID-19 context. | Optimization of FSS. |
Zhu et al. [28] (Data collection 15 March to 31 March 2022). | Empirical statistical -parametric/CBSEM. | Resilience directly and positively affects social sustainability and plays a mediating role in the relationship between resilience and supply chain performance. | SSFs as an effect of SCR. |
El Baz et al. [19] (Data collection March to May 2022). | Empirical statistical/PLS-SEM. | Social sustainability significantly and positively influences supply chain resilience in France during- and post-pandemic. | SSFs as a cause of SCR. |
This work (Data collection 2019, 2021, and 2023). | Empirical statistical and mathematical/PLS-SEM and evolutionary fuzzy knowledge transfer approach. | Evolutionary fuzzy knowledge transfer between pre-, during-, and post-pandemic COVID-19 affected the relationship between social sustainability and supply chain resilience in representative cases from Mexico. | SSFs as a cause of SCR. |
1.1. Contributions
1.2. Research Approach and Objective
2. Literature Review
2.1. Factors of Social Sustainability and Resilience in the Pre-Pandemic Supply Chain
2.2. Factors of Social Sustainability and Resilience in Supply Chains During the Pandemic
2.3. Social Sustainability Factors (FSSs) and Resilience in the Supply Chain (SCR) During the Post-Pandemic Period
2.4. Approaches Related to SSFs in SCR
3. Theoretical and Empirical Support for the Hypotheses
3.1. Capability Theory and Resource-Based Vision
3.2. Rights, Occupational Health, and Resilience in the Supply Chain
3.3. Inclusion, Gender Equity, and Resilience in the Supply Chain
3.4. Social Responsibility and Resilience in the Supply Chain
4. Materials and Methods
4.1. Participants
4.2. Sample Adequacy and Common Method Bias
4.3. Measures
4.4. Research Design and Statistical Analysis
4.5. The Fuzzy Inference System
4.6. Experimental Setup
5. Results
5.1. Validation of the Measurement Model and Structural Model: PLS-SEM
5.2. Fuzzy Rules for Knowledge Transfer
6. Discussion
7. Theoretical Implications
8. Managerial Implications
9. Limitations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
1. Labor rights and health. [3,48] |
---|
1.1. Our suppliers maintained a strict policy prohibiting forced child labor. |
1.2. Our suppliers receive regular labor audits from customers |
1.3. Our suppliers have a strict watch on violations of labor rights. |
1.4. Our suppliers have a strict workplace health and safety policy. |
1.5. Our suppliers ensure occupational health and hygiene. |
1.6. Our suppliers receive guidance for implementing occupational health and safety measures. |
2. Inclusion and gender equity. [3,48] |
2.1. Our suppliers generated employment for locals, women, people with disabilities, marginalized and minorities in their external society |
2.2. Our suppliers have gender equality and non-discrimination policies. |
2.3. Our suppliers give each employee equal opportunity for growth based on merit. |
2.4. Our suppliers do not deny employees any rights or privileges because of their age, sex, race, community, religion, or nationality. |
3. Social Responsibility. [3,48] |
3.1. Our suppliers engage in philanthropic/selfless aid. |
3.2. Our suppliers conducted health camps and awareness programs. |
3.3. Our suppliers carried out skills development programs for unemployed young people. |
4. Supply chain resilience. [3,83] |
4.1. Our CS can quickly return to its original state after being discontinued. |
4.2. Our CS can maintain a desired level of connection between its members during the outage. |
4.3. Our CS can maintain a desired level of control over structure and function during disruption. |
4.4. Our CS had the necessary knowledge to recover from interruptions and unexpected events. |
4.5. Our SC has the financial capacity to deal with the economic consequences of the disturbance. |
4.6. Our CS has the infrastructure capable of responding quickly to disturbances. |
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Characteristic | Cases |
---|---|
Pandemic Time | |
Pre-COVID19 (2019) | 153 |
In-COVID19 (2021) | 159 |
Post-COVID19 (2023) | 119 |
Market Coverage | |
Global | 90 |
LATAM | 103 |
National | 168 |
Local/regional | 70 |
Sex | |
Female | 219 |
Male | 212 |
Experience (years) | |
0–5 | 148 |
6 to 10 | 97 |
11 to 20 | 110 |
More than 20 | 76 |
Sector | |
Commerce | 54 |
Industry | 210 |
Services | 167 |
Sample Groups | Interaction | M | t | 5.0–95.0% | p | ||
---|---|---|---|---|---|---|---|
1. Complete group (2019, 2021, 2023) | SS – CSR | 0.670 *** | 0.671 | 0.0380 | 17.669 | 0.604–0.731 | 0.000 |
2. Pre-COVID-19 group (2019) | SS – CSR | 0.724 *** | 0.729 | 0.050 | 14.514 | 0.605–0.794 | 0.000 |
3. Group in COVID-19 (2021) | SS – CSR | 0.563 *** | 0.571 | 0.074 | 7.584 | 0.437–0.686 | 0.000 |
4. Post-COVID-19 group (2023) | SS – CSR | 0.693 *** | 0.696 | 0.060 | 11.485 | 0.437–0.686 | 0.000 |
AND Antecedents (Pre-in-Post-Pandemic) | Consequent | ||||||
---|---|---|---|---|---|---|---|
Rules | 1. Labor Rights and Health | 2. Inclusion and Gender Equity | 3. Social Responsibility | 4. Supply Chain Resilience | |||
Pre-Pandemic | In-Pandemic | Post-Pandemic | |||||
Non-Transfer | With Transfer | ||||||
1 | Low | Low | Low | Mid | Low | Mid | Mid |
2 | Low | Low | Mid | Mid | High | Low | Mid |
3 | Low | Low | High | Mid | Low | Low | Low |
4 | Low | Mid | Low | Mid | Low | High | Low |
5 | Low | Mid | Mid | High | High | High | High |
6 | Low | Mid | High | High | High | Low | Low |
7 | Low | High | Low | Low | Mid | High | High |
8 | Low | High | Mid | Low | High | Mid | Mid |
9 | Low | High | High | High | Mid | Mid | High |
10 | Mid | Low | Low | Low | Mid | Low | Mid |
11 | Mid | Low | Mid | Mid | Low | Mid | High |
12 | Mid | Low | High | High | High | Low | Mid |
13 | Mid | Mid | Low | Mid | High | Mid | Mid |
14 | Mid | Mid | Mid | High | High | Mid | Mid |
15 | Mid | Mid | High | Low | Mid | Mid | Mid |
16 | Mid | High | Low | Mid | Mid | Low | Mid |
17 | Mid | High | Mid | Mid | High | High | High |
18 | Mid | High | High | High | Mid | Mid | High |
19 | High | Low | Low | Low | High | High | Low |
20 | High | Low | Mid | Mid | Mid | High | Low |
21 | High | Low | High | High | Low | High | Low |
22 | High | Mid | Low | High | Low | Mid | High |
23 | High | Mid | Mid | High | High | Mid | Mid |
24 | High | Mid | High | Mid | Mid | Mid | High |
25 | High | High | Low | High | High | Low | Low |
26 | High | High | Mid | High | High | High | High |
27 | High | High | High | High | High | High | High |
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Reyna-Castillo, M.; Santiago, A.; Barrios-del-Ángel, A.X.; García-Reyes, F.M.; Balderas, F.; Anchondo-Pérez, J.I. Effect of Social Sustainability on Supply Chain Resilience Before, During, and After the COVID-19 Pandemic in Mexico: A Partial Least Squares Structural Equation Modeling and Evolutionary Fuzzy Knowledge Transfer Approach. Logistics 2025, 9, 50. https://doi.org/10.3390/logistics9020050
Reyna-Castillo M, Santiago A, Barrios-del-Ángel AX, García-Reyes FM, Balderas F, Anchondo-Pérez JI. Effect of Social Sustainability on Supply Chain Resilience Before, During, and After the COVID-19 Pandemic in Mexico: A Partial Least Squares Structural Equation Modeling and Evolutionary Fuzzy Knowledge Transfer Approach. Logistics. 2025; 9(2):50. https://doi.org/10.3390/logistics9020050
Chicago/Turabian StyleReyna-Castillo, Miguel, Alejandro Santiago, Ana Xóchitl Barrios-del-Ángel, Francisco Manuel García-Reyes, Fausto Balderas, and José Ignacio Anchondo-Pérez. 2025. "Effect of Social Sustainability on Supply Chain Resilience Before, During, and After the COVID-19 Pandemic in Mexico: A Partial Least Squares Structural Equation Modeling and Evolutionary Fuzzy Knowledge Transfer Approach" Logistics 9, no. 2: 50. https://doi.org/10.3390/logistics9020050
APA StyleReyna-Castillo, M., Santiago, A., Barrios-del-Ángel, A. X., García-Reyes, F. M., Balderas, F., & Anchondo-Pérez, J. I. (2025). Effect of Social Sustainability on Supply Chain Resilience Before, During, and After the COVID-19 Pandemic in Mexico: A Partial Least Squares Structural Equation Modeling and Evolutionary Fuzzy Knowledge Transfer Approach. Logistics, 9(2), 50. https://doi.org/10.3390/logistics9020050