The Agricultural Ecological Effects of Rural Labor Migration: A Perspective Based on Green Total Factor Productivity
Abstract
1. Introduction
1.1. Research Background
1.2. Research Questions and Initial Hypotheses
2. Literature Review and Hypothesis Formulation
2.1. Direct Effects of RLM on Agricultural Ecological Efficiency
2.2. Spatial Spillover Effect of RLM on Agricultural Ecological Efficiency
2.3. Regional Heterogeneity in the Impact of RLM on Agricultural Ecological Efficiency
3. Research Design
3.1. Modeling
3.1.1. Fixed Effects Model and SYS-GMM
3.1.2. SDM
3.2. Research Area and Time Frame
3.3. Variables and Data
3.3.1. Explained Variable: Agricultural Ecological Efficiency
3.3.2. Explanatory Variable: Rural Labor Migration
3.3.3. Control Variable
3.4. Data Sources
4. Empirical Results
4.1. Analysis of Direct Impact
4.2. Analysis of Spatial Effects
4.2.1. Moran’s I
4.2.2. SDM Regression Results
4.2.3. Robust Test
4.3. Heterogeneity Analysis
5. Discussion
5.1. Discussion of Direct and Spatial Spillover Effects
5.2. Discussion on Heterogeneity
6. Conclusions, Policy Recommendations, and Research Limitations
6.1. Conclusion and Policy Recommendations
- (1)
- RLM is not merely a population movement issue but also provides an important opportunity for advancing green agricultural development. While facilitating labor outflow, efforts should be made to equip the migrating workforce with modern agricultural management skills, mechanized operation capabilities, and eco-friendly production techniques, enabling them to contribute to the enhancement of agricultural green total factor productivity. Specific measures may include: first, providing targeted training for migrant workers, with a focus on organic agriculture, green farming, ecological pest management, and precision fertilization; second, expanding the adoption of smart agricultural equipment and mechanized production facilities to mitigate the negative effects of labor shortages on production efficiency and ecological performance; third, establishing technology demonstration sites and mobile training stations, where hands-on practice and experience sharing allow laborers to acquire practical skills during migration. These initiatives not only improve local agricultural ecological efficiency but also facilitate the diffusion of green technologies and management experience through labor returning to their hometowns or across upstream and downstream links in the agricultural value chain.
- (2)
- RLM not only affects local agricultural ecological efficiency but also generates a spatial spillover effect through the transfer of technology, capital, management experience, and industrial chain linkages. To fully leverage this potential, cross-regional cooperation and technology sharing should be encouraged: first, establish regional agricultural cooperation alliances to promote high-efficiency agricultural practices in areas with lower ecological efficiency through experience exchange and technical training; second, support collaboration along regional agricultural product value chains so that the technological and managerial advantages brought by labor migration can diffuse throughout upstream and downstream segments; third, encourage local governments to incorporate considerations of neighboring regions’ coordinated development into policy-making, by enhancing infrastructure, sharing information platforms, and linking public services to strengthen the synergy of green agricultural development across regions. Through these measures, RLM can not only improve the agricultural ecological efficiency of individual regions but also drive the optimization of green total factor productivity across entire regions, contributing to the sustainable development of regional agriculture.
- (3)
- In the southern regions, where paddy rice cultivation dominates, labor demand is concentrated during peak farming seasons, and land is fragmented with a high level of refined management. As a result, labor outflows can cause short-term disruptions to green agricultural production. To address this, it is essential to promote the adoption of eco-friendly planting technologies, precision management practices, and agricultural machinery, while encouraging cooperatives, family farms, and agricultural extension services to provide labor substitutes or technical support during critical production stages. In contrast, northern regions feature higher levels of mechanization, and labor outflows may even facilitate land consolidation and large-scale operations, thereby enhancing agricultural ecological efficiency. In these areas, further efforts should focus on promoting smart agriculture, information-based management, and precision fertilization technologies, as well as strengthening the transfer of agricultural technological achievements to farmers and enterprises to drive the transformation from traditional to green modern agriculture. In highly urbanized regions, governments should reinforce urban–rural collaboration mechanisms to optimize the positive impact of labor mobility on agricultural production efficiency; in less urbanized areas, infrastructure development, technology promotion, and public service investment should be increased to enhance local attractiveness, enabling labor flows to more evenly support green agricultural development.
6.2. Practical and Theoretical Contributions
6.3. Research Limitations and Future Research Suggestions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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| Inspection Results | |||
|---|---|---|---|
| W1 | W2 | ||
| Wald Test | Wald Test for SAR | 95.97 *** | 79.45 *** | 
| Wald Test for SEM | 88.96 *** | 90.41 *** | |
| LR Test | Simplified as SAR | 85.64 *** | 71.69 *** | 
| Simplified as SEM | 85.20 *** | 66.06 *** | |
| Hausman Test | 41.93 *** | 26.78 *** | |
| LM Test | Moran’s I | 10.112 *** | 11.507 *** | 
| Lagrange multiplier | 95.122 *** | 110.710 *** | |
| Robust Lagrange multiplier | 6.103 ** | 0.054 * | |
| Lagrange multiplier | 141.350 *** | 150.392 *** | |
| Robust Lagrange multiplier | 52.331 *** | 39.736 *** | |
| Criteria Layer | Indicator Layer | Unit | |
|---|---|---|---|
| Input | Land investment | Seeded area | 1000 hm2 | 
| Labor input | Number of employed individuals in the primary industry | Ten thousand people | |
| Mechanical investment | Mechanical investment | 10,000 kW | |
| Resource investment | Fertilizer usage | 10,000 t | |
| Agricultural film usage | Tons | ||
| Agricultural irrigation area | 1000 hm2 | ||
| Output | Expected output | Primary production value | RMB 100mn | 
| Unexpected output | Agricultural carbon emissions | Ten thousand tons | 
| Variable | Name | Abbreviation | Definition | N | Mean | SD | 
|---|---|---|---|---|---|---|
| Dependent variable | Agricultural GTFP | GTFP | Refer to 3.3.1 | 360 | 0.969 | 0.200 | 
| Explanatory variables | Rural labor migration | RLM | Refer to 3.3.2 | 360 | 0.622 | 0.109 | 
| Control variable | Average standard of living | ENG | Engel coefficient | 360 | 33.452 | 5.769 | 
| Educational level | EDU | Per capita years of education | 360 | 7.974 | 0.848 | |
| Agricultural industry agglomeration level | IA | (Provincial primary output value/National primary output value)/(Provincial GDP/National GDP) | 360 | 0.026 | 0.039 | |
| Degree of government intervention | GOV | Fiscal expenditure/regional GDP | 360 | 0.249 | 0.103 | |
| Level of openness to the outside world | OPEN | Total import and export volume/regional GDP | 360 | 0.263 | 0.285 | 
| Fixed Effects Model | SYS-GMM | |||
|---|---|---|---|---|
| RLM | 1.888 *** | 0.588 ** | 0.592 * | 1.949 ** | 
| 7.59 | 2.39 | 1.64 | 1.95 | |
| ENG | −0.007 *** | 0.004 | ||
| −5.20 | 1.16 | |||
| EDU | 0.106 *** | 0.064 * | ||
| 11.41 | 1.83 | |||
| IA | −6.626 *** | −3.984 ** | ||
| −3.41 | −2.59 | |||
| GOV | −0.013 | 0.708 *** | ||
| −0.06 | 3.16 | |||
| OPEN | −0.227 ** | 0.102 | ||
| −2.57 | 0.74 | |||
| _cons | −0.785 *** | −0.352 * | 0.021 | −1.583 *** | 
| −5.07 | −1.83 | 0.09 | −3.44 | |
| N | 360 | 360 | 330 | 330 | 
| R2 | 0.149 | 0.446 | ||
| AR(1) | 2.20 | −0.72 | ||
| AR(2) | 2.27 | −0.64 | ||
| Hansen Test | 29.98 | 24.88 | ||
| Year | Moran’s I (W1) | Moran’s I (W2) | 
|---|---|---|
| 2011 | 0.238 ** | 0.091 *** | 
| 2012 | 0.223 ** | 0.071 *** | 
| 2013 | 0.207 ** | 0.108 *** | 
| 2014 | 0.155 ** | 0.060 *** | 
| 2015 | 0.204 ** | 0.079 *** | 
| 2016 | 0.262 *** | 0.136 *** | 
| 2017 | 0.295 *** | 0.136 *** | 
| 2018 | 0.349 *** | 0.016 * | 
| 2019 | 0.301 *** | 0.075 *** | 
| 2020 | 0.331 *** | −0.009 | 
| 2021 | 0.219 ** | 0.038 * | 
| 2022 | 0.220 ** | 0.065 * | 
| W1 | W2 | ||||
|---|---|---|---|---|---|
| Wx | RLM | 3.043 *** | 3.000 *** | 2.124 *** | 4.376 *** | 
| 10.90 | 8.89 | 5.38 | 5.62 | ||
| ENG | 0.002 | 0.009 *** | |||
| 1.06 | 2.86 | ||||
| EDU | 0.006 | 0.012 | |||
| 0.50 | 0.71 | ||||
| IA | −8.130 ** | −8.336 * | |||
| −2.44 | −1.94 | ||||
| GOV | −1.059 *** | −2.424 *** | |||
| −4.00 | −4.57 | ||||
| OPEN | −0.335 *** | −0.680 *** | |||
| −3.35 | −3.09 | ||||
| Spatial | rho | 0.511 *** | 0.334 *** | 0.694 *** | 0.311 *** | 
| 11.86 | 6.21 | 13.14 | 2.98 | ||
| Variance | sigma2_e | 0.005 *** | 0.005 *** | 0.006 *** | 0.006 *** | 
| 13.20 | 13.30 | 12.69 | 12.71 | ||
| Direct effect | RLM | 0.209 | 0.105 * | 0.135 * | 0.076 ** | 
| 1.49 | 1.61 | 1.79 | 2.21 | ||
| Indirect effect | RLM | 5.517 *** | 4.152 *** | 6.061 *** | 6.179 *** | 
| 14.52 | 9.70 | 7.67 | 7.93 | ||
| Total effect | RLM | 5.726 *** | 4.257 *** | 6.196 *** | 6.103 *** | 
| 13.67 | 8.65 | 7.48 | 7.68 | ||
| N | 360 | 360 | 360 | 360 | |
| R2 | 0.587 | 0.720 | 0.496 | 0.694 | |
| Other Matrices | Other Models | |||
|---|---|---|---|---|
| W3 | SAR | SEM | ||
| Main | RLM | 0.181 | 0.319 *** | 0.311 *** | 
| 0.98 | 2.88 | 2.56 | ||
| Wx | RLM | 3.172 *** | ||
| 6.99 | ||||
| Spatial | rho | 0.341 *** | 0.399 *** | |
| 5.42 | 7.00 | |||
| lambda | 0.341 *** | |||
| 4.88 | ||||
| Variance | sigma2_e | 0.006 *** | 0.178 *** | 0.019 *** | 
| 12.68 | 13.25 | 13.22 | ||
| Direct effect | 0.029 | 0.339 *** | ||
| 0.16 | 2.82 | |||
| Indirect effect | 4.513 *** | 0.208 ** | ||
| 8.08 | 2.14 | |||
| Total effect | 4.542 *** | 0.547 *** | ||
| 7.57 | 2.62 | |||
| Controls | YES | YES | YES | |
| N | 360 | 360 | 360 | |
| R2 | 0.675 | 0.443 | 0.345 | |
| (1) | (2) | (3) | (4) | ||
|---|---|---|---|---|---|
| Southern Region | Northern Region | High Level of Urbanization | Low Level of Urbanization | ||
| Main | RLM | −0.949 *** | 0.427 * | 0.845 *** | −1.192 *** | 
| −4.22 | 1.68 | 2.83 | −5.18 | ||
| Wx | RLM | 1.275 *** | 3.314 *** | 1.809 *** | 3.486 *** | 
| 2.65 | 7.65 | 5.79 | 6.28 | ||
| Spatial | rho | 0.482 *** | 0.240 *** | 0.242 *** | 0.302 *** | 
| 6.85 | 2.92 | 3.92 | 3.66 | ||
| Variance | sigma2_e | 0.004 *** | 0.004 *** | 0.005 *** | 0.005 *** | 
| 9.26 | 9.43 | 9.69 | 9.02 | ||
| Direct effect | RLM | −0.808 *** | 0.680 *** | 1.094 *** | −0.832 *** | 
| −3.29 | 2.80 | 3.67 | −3.51 | ||
| Indirect effect | RLM | 1.439 * | 4.236 *** | 2.398 *** | 3.437 *** | 
| 1.68 | 8.13 | 6.88 | 6.09 | ||
| Total effect | RLM | 0.631 | 4.916 *** | 3.492 *** | 2.605 *** | 
| 0.65 | 8.05 | 6.81 | 3.89 | ||
| Controls | YES | YES | YES | YES | |
| N | 180 | 180 | 192 | 168 | |
| R2 | 0.744 | 0.731 | 0.721 | 0.737 | |
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Mao, X.; Li, A. The Agricultural Ecological Effects of Rural Labor Migration: A Perspective Based on Green Total Factor Productivity. Sustainability 2025, 17, 9639. https://doi.org/10.3390/su17219639
Mao X, Li A. The Agricultural Ecological Effects of Rural Labor Migration: A Perspective Based on Green Total Factor Productivity. Sustainability. 2025; 17(21):9639. https://doi.org/10.3390/su17219639
Chicago/Turabian StyleMao, Xiaobao, and Aizhi Li. 2025. "The Agricultural Ecological Effects of Rural Labor Migration: A Perspective Based on Green Total Factor Productivity" Sustainability 17, no. 21: 9639. https://doi.org/10.3390/su17219639
APA StyleMao, X., & Li, A. (2025). The Agricultural Ecological Effects of Rural Labor Migration: A Perspective Based on Green Total Factor Productivity. Sustainability, 17(21), 9639. https://doi.org/10.3390/su17219639
 
        


 
       