The Impact of High-Standard Farmland Construction Policy on Rural Poverty in China
Abstract
:1. Introduction
2. Literature Review and Mechanisms
2.1. Literature Review
2.1.1. Research on Rural Poverty Reduction
2.1.2. Research on Investment in Integrated Agricultural Development and Poverty
2.2. Mechanism and Research Hypotheses
2.2.1. Disaster Reduction Effects of High-Standard Farmland Construction
2.2.2. Yield-Increasing Effects of High-Standard Farmland Construction
2.2.3. Technical Effects of High-Standard Farmland Construction
3. Research Method
3.1. Identification Strategy
3.1.1. Baseline Regression Models
3.1.2. Parallel Trend Tests and Analysis of the Dynamic Effects of Policy
3.1.3. Mechanism Validation Model
4. Variables and Data
4.1. Selection of Variables
4.1.1. Explained Variable
4.1.2. Core explanatory Variables
4.1.3. Control Variables
4.2. Data Sources and Description of Characteristic Facts
4.2.1. Data Sources
4.2.2. Descriptive Statistics
5. Empirical Results and Analysis
5.1. Baseline Regression Results
5.2. Parallel Trend Tests and Dynamic Policy Effects
5.2.1. Parallel Trend Test
5.2.2. Dynamic Policy Effects
5.3. Robustness Tests
- (1)
- Substitution of core explanatory variables: We consider that the extent of high-standard farmland construction can be characterized not only by using agricultural investment but also by using the area of farmland remediation (LS). Therefore, the interaction term of the dummy variable of land remediation area and the year of policy implementation was selected as a proxy for the core explanatory variables. The results are shown in column (1) of Table 4, where the regression coefficient of the new interaction term is −0.0137 and is significant at the 1% level, thus indicating that policy implementation still has a significant effect on rural poverty.
- (2)
- Changing the sample period: Because the previous regression results were based on the full sample, the high-standard farmland construction policy went into effect in 2011, and thus there is a longer period before its implementation. In order to ensure that there is little difference in the periods before and after implementation, a sample from 2009–15 (i.e., two years before and four years after implementation) is selected for further analysis, which can also partly avoid the impact of the 2008 financial crisis. The results are shown in column (2) of Table 4. The regression coefficient is −0.0661, and the estimated results are consistent with those generated by the dominance test.
- (3)
- Lagging the control variables by one period: Considering the possible causal relationship between the high-standard farmland construction policy and the incidence of rural poverty, all control variables were regressed with a one-period lag in order to weaken the potential endogeneity effect. The results are shown in column (3) of Table 4. The sign and significance of the regression coefficients remain consistent with the previous baseline regression results, again verifying the robustness of the baseline regression results.
5.4. Heterogeneity Analysis
- (1)
- Heterogeneity of different poverty levels: Considering the difference in the incidence of poverty across regions, the role of the high-standard farmland construction policy may also be different. In order to test the heterogeneity of policy implementation in regions with different poverty levels, the samples are divided into low poverty incidence and high poverty incidence groups according to the intermediate quantile of poverty incidence, and then further analyzed. As shown in columns (1) and (2) of Table 5, the policy effect in regions with high poverty incidence is significantly greater than that in regions with low poverty incidence. One possible explanation for this result is that the principle of “giving priority to the old revolutionary and poor areas” was put forward in the “Opinion on effectively strengthening the construction of high-standard farmland to enhance the national food security guarantee capacity1, so the construction of high-standard farmland in areas with high incidence of poverty may be faster than that in areas with low incidence of poverty, and its effect on poverty reduction more significant.
- (2)
- The heterogeneity of land consolidation: The scale of land consolidation in various regions reflects the progress of high-standard farmland construction to a certain extent, and different levels of construction progress will also have different poverty reduction effects. In order to test the heterogeneity of the policy effects under different land consolidation scales, the samples are divided into large and small farmland consolidation scale groups according to the middle quantile of farmland consolidation. From column (3) and column (4) in Table 5, it can be seen that although the regression coefficient of the small-scale farmland consolidation group is negative, it does not pass the dominance test. The regression coefficient of the large-scale farmland consolidation group is significantly negative, which indicates that with the deepening of high-standard farmland construction, the poverty reduction effects of the policy become stronger.
- (3)
- The heterogeneity of different geographic locations: Taking into account the differences in climatic conditions, soil quality, and economic development across regions, the samples are divided into eastern, central and western regions according to the classification criteria of China National Development and Reform Commission. Table 6 reports the impact of the high-standard farmland construction policy on the incidence of poverty in the three regions. The results show that in the eastern and western regions, the impact coefficient is significantly negative, and the regression coefficient in the western region is smaller than that in the eastern region, thus indicating that the policy reduction effect in the western region is stronger. The estimation results of the central region are not apparent, which may be due to the existence of its large agricultural surplus labor force. These labor resources cannot be transferred in the short term, which is conducive to poverty and offsets the effect of the policy. The agricultural development conditions in the western region are worse than those in the eastern region. The implementation of the high-standard farmland construction policy can therefore have the most prominent poverty reduction effects in the western region.
5.5. Further Analysis: Mechanism Analysis
- (1)
- Disaster-mitigating effects of high-standard farmland construction policy:
- (2)
- Yield-enhancing effects of the high-standard farmland construction policy:
- (3)
- Technological advancement effect of the high-standard farmland construction policy:
6. Conclusions and Recommendations
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
1 | Document: ‘Opinion on effectively strengthening the construction of high-standard farmland to enhance the national food security guarantee capacity’ National Office [2019] No. 50. |
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Variable Name | Variable Abbreviation | Metrics | Average Value | Standard Deviation |
---|---|---|---|---|
Incidence of rural poverty | engel | Food consumption expenditure/total consumption expenditure (%) | 39.08 | 0.0728 |
Agricultural investment | Ai | Amount of investment in agricultural development (RMB billion) | 0.1602 | 0.0974 |
Rural health care standards | Medical | Number of beds in township health centers/total rural population (beds/thousand people) | 1.6862 | 0.5641 |
Rural education standards | Edu | Years of schooling for rural residents/population of school age (years/person) | 8.6474 | 1.2073 |
Level of urbanization | Urban | Urban population/total population (%) | 0.5203 | 0.1466 |
Level of financial support to agriculture | Gov | Local financial expenditure on agriculture, forestry and water undertakings (in billions of yuan) | 0.3164 | 0.2508 |
Area of land reclamation | LnLS | Demonstration Project for the Improvement of Low and Medium Yield Land and High Standard Farmland (thousand hectares) | 7.1743 | 0.8807 |
Scale of land reclamation | Hrate | Area of low- and medium-yielding land and high-standard farmland rehabilitated/total arable land area (%) | 0.3684 | 0.2373 |
Crop failure rate | Disaster | Area affected/total crop area sown (%) | 0.1099 | 0.0860 |
Number of agricultural machines per capita | Machine | Total number of agricultural machinery/total rural population (units/person) | 0.0346 | 0.0300 |
Gross agricultural output per capita | LnGdp | Total value of agricultural output/total rural population (yuan/person) | 9.605 | 0.6168 |
Engel | (1) | (2) | (3) |
---|---|---|---|
Ordinary Standard Error | Robust Standard Error | Bootstrap Sampling 1000 Times | |
Aii × Itpost | −0.074 *** | −0.074 *** | −0.074 *** |
(0.025) | (0.022) | (0.025) | |
Medical | −0.015 *** | −0.015 *** | −0.015 *** |
(0.004) | (0.003) | (0.004) | |
Edu | −0.013 ** | −0.013 * | −0.013 * |
(0.006) | (0.008) | (0.008) | |
lnUrban | −0.144 *** | −0.144 *** | −0.144 *** |
(0.030) | (0.039) | (0.040) | |
Gov | 0.030 * | 0.030 ** | 0.030 ** |
(0.000) | (0.000) | (0.000) | |
Constant | 0.456 *** | 0.456 *** | 0.456 *** |
(0.061) | (0.074) | (0.079) | |
Sample size | 403 | 403 | 403 |
R-squared | 0.926 | 0.926 | 0.926 |
Provincial effects | YES | YES | YES |
Year effect | YES | YES | YES |
Variable | Regression Coefficient |
---|---|
Ai × 2006 | 0.004 (0.079) |
Ai × 2007 | −0.050 (0.083) |
Ai × 2008 | −0.082 (0.060) |
Ai × 2009 | −0.123 (0.080) |
Ai × 2010 | −0.084 (0.063) |
Ai × 2011 | −0.131 ** (0.058) |
Ai × 2012 | −0.092 * (0.055) |
Ai × 2013 | −0.081 (0.054) |
Ai × 2014 | −0.108 *** (0.040) |
Ai × 2015 | −0.097 ** (0.039) |
Ai × 2016 | −0.136 ** (0.059) |
Ai × 2017 | −0.106 ** (0.043) |
Constant | 0.467 *** (0.075) |
Sample size | 403 |
R-squared | 0.927 |
Control variables | YES |
Provincial effects | YES |
Year effect | YES |
Variable | (1) | (2) | (3) |
---|---|---|---|
Replacement of Core Explanatory Variables | Change of Sample Period | Control Variables Lagged by One Period | |
lnLS × Itpost | −0.0137 *** | ||
(0.004) | |||
Aii × Itpost | −0.0661 ** | −0.0711 *** | |
(0.031) | (0.023) | ||
Control variables | YES | YES | |
Control variable lag | YES | ||
Constant | 0.4568 *** | 0.4518 *** | 0.4708 *** |
(0.073) | (0.094) | (0.081) | |
Sample size | 403 | 217 | 372 |
R-squared | 0.9276 | 0.9148 | 0.9265 |
Provincial effects | YES | YES | YES |
Year effect | YES | YES | YES |
(1) | (2) | (3) | (4) | |
---|---|---|---|---|
Lower Poverty Incidence Group | Higher Incidence of Poverty Group | Small-Scale Land Consolidation Group | Large-Scale Land Consolidation Group | |
Aii × Itpost | −0.0396 ** (0.018) | −0.1797 ** (0.080) | −0.0348 (0.031) | −0.1051 *** (0.036) |
Constant | 0.3007 *** (0.071) | 0.6315 *** (0.121) | 0.2387 ** (0.108) | 0.3495 *** (0.075) |
Sample size | 202 | 202 | 202 | 202 |
R-squared | 0.8891 | 0.8523 | 0.9379 | 0.9564 |
Control variables | YES | YES | YES | YES |
Provincial effects | YES | YES | YES | YES |
Year effect | YES | YES | YES | YES |
(1) | (2) | (3) | |
---|---|---|---|
Eastern Region | Central Region | Western Region | |
Aii × Itpost | −0.1155 *** (0.036) | 0.0257 (0.034) | −0.1575 *** (0.060) |
Constant | 0.4418 *** (0.084) | 0.3813 ** (0.148) | 0.4693 *** (0.139) |
Sample size | 143 | 104 | 156 |
R-squared | 0.9537 | 0.9313 | 0.9159 |
Control variables | YES | YES | YES |
Provincial effects | YES | YES | YES |
Year effect | YES | YES | YES |
(1) | (2) | (3) | (4) | (5) | (6) | |
---|---|---|---|---|---|---|
Disaster | lnGdp | lnMachine | Engel | |||
Aii × Itpost | −0.127 * | 0.713 *** | 1.002 *** | −0.0695 *** | −0.0413 * | −0.0633 *** |
(0.067) | (0.200) | (0.235) | (0.022) | (0.022) | (0.023) | |
Disaster | 0.0336 ** | |||||
(0.017) | ||||||
lnGdp | −0.0455 *** | |||||
(0.011) | ||||||
lnMachine | −0.0104 ** | |||||
(0.005) | ||||||
Constant | 0.0488 | 9.1165 *** | −1.843 ** | 0.454 *** | 0.871 *** | 0.437 *** |
(0.29) | (0.498) | (0.716) | (0.074) | (0.139) | (0.077) | |
Sample size | 403 | 403 | 403 | 403 | 403 | 403 |
R-squared | 0.5060 | 0.9608 | 0.9292 | 0.9809 | 0.9315 | 0.9498 |
Control variables | YES | YES | YES | YES | YES | YES |
Provincial effects | YES | YES | YES | YES | YES | YES |
Year effect | YES | YES | YES | YES | YES | YES |
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Peng, J.; Zhao, Z.; Chen, L. The Impact of High-Standard Farmland Construction Policy on Rural Poverty in China. Land 2022, 11, 1578. https://doi.org/10.3390/land11091578
Peng J, Zhao Z, Chen L. The Impact of High-Standard Farmland Construction Policy on Rural Poverty in China. Land. 2022; 11(9):1578. https://doi.org/10.3390/land11091578
Chicago/Turabian StylePeng, Jiquan, Zihao Zhao, and Lili Chen. 2022. "The Impact of High-Standard Farmland Construction Policy on Rural Poverty in China" Land 11, no. 9: 1578. https://doi.org/10.3390/land11091578
APA StylePeng, J., Zhao, Z., & Chen, L. (2022). The Impact of High-Standard Farmland Construction Policy on Rural Poverty in China. Land, 11(9), 1578. https://doi.org/10.3390/land11091578