Increase or Reduce: How Does Rural Infrastructure Investment Affect Villagers’ Income?
Abstract
:1. Introduction
2. Materials and Methods
2.1. Theoretical Analysis and Research Hypotheses
2.1.1. Structure of RII
2.1.2. Spatiality of RII
2.1.3. Heterogeneity of RII
2.2. Variables
- Explained variables. This study employed villagers’ income, wage income, and non-wage income in each province as explained variables. Villagers’ income is the sum of the wage income and non-wage income. Non-wage income comprised villagers’ business income, transfer income, and property income;
- Explanatory variables. This study categorized rural infrastructure into LII and PII. LII pertained to infrastructure investment in water, gas, heating, roads, drainage, landscaping, environmental sanitation, etc. in rural areas; PII referred to agricultural production construction projects, such as agriculture, forestry and pasture, the purchase of machinery and equipment for agricultural production, as well as investment in farmland construction projects, irrigation, drainage, and other small-scale water conservancy projects in rural townships, villages, and groups. The perpetual inventory method was utilized to calculate RII, and the formula is as follows:
- Control variables. In addition to the two core explanatory variables of LII and PII, this study employed control variables, such as the job-related migration level, education level, economic development level, urbanization level, cultivated land endowment, openness level, and agricultural development level, referring to the practices of the existing literature [10,53,54]. The job-related migration level was expressed as the proportion of migrant laborers to aggregate laborers; the education level was expressed as the average number of years of the villagers’ education; the economic development level was expressed as the per capita comparable gross domestic product (GDP); the urbanization level was expressed as the urbanization rate; the cultivated land endowment was expressed as the ratio of the family-operated cultivated land area to the number of people in the rural population; the openness level was expressed as the proportion of the total import and export volume to the GDP; the agricultural development level was expressed as the proportion of the gross agricultural production to the GDP.
2.3. Data
2.4. Methods
- Standard Deviational Ellipse (SDE) Model. The SDE model is a statistical method used to describe the spatial directional characteristics of economic geographical elements. In this study, the SDE model was employed to depict the changing trajectories and discrete trends of the centers of gravity of RII and villagers’ income in China. The specific calculation formulae are as follows:
- Multiple Regression Model. Considering only the structure of the villagers’ wage income and non-wage income, as well as the heterogeneity of the job-related migration and education level, the multiple regression model was set as follows:
- Quantile regression model. The quantile regression model compares the influence of the independent variable on the dependent variable at different quantile points [59]. When the explanatory variable has varying effects on the explained variable at different quantiles, such as left skewness or right skewness, quantile regression captures the tail characteristics of the distribution. It was utilized to examine the differences in the income-increasing effect of RII between high-income villagers and low-income villagers. For a population of random variables (), the general linear conditional quantile function for the τth quantile is as follows:For any , is a p-dimensional vector, is the tilted absolute value function, and the estimated value shown in the following formula is called the regression coefficient estimate at the τth quantile:
- Spatial panel regression model. The spatial panel regression model includes the spatial autoregression model (SAR), the spatial Durbin model (SDM), and the spatial error model (SEM). They were used to consider the spatial spillover effect of RII. The general expressions are as follows:
3. Results and Discussion
3.1. Analysis of Spatial Agglomeration Characteristics
3.1.1. Spatial Static Distribution
3.1.2. Spatial Dynamic Distribution
3.2. Results of Structure
3.3. Results of Spatiality
3.4. Results of Heterogeneity
3.5. Discussion
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variable Name | Variable Code | Meaning (Unit) | Average Value | Standard Deviation | Minimum | Maximum | |
---|---|---|---|---|---|---|---|
Explained variables | Villagers’ income | Per capita income of villagers (Ten thousand yuan) | 0.953 | 0.465 | 0.252 | 2.726 | |
Villagers’ wage income | Per capita wage income of villagers (Ten thousand yuan) | 0.418 | 0.337 | 0.039 | 1.779 | ||
Villagers’ non-wage income | Per capita non-wage income of villagers (Ten thousand yuan) | 0.535 | 0.205 | 0.167 | 1.124 | ||
Explanatory variables | LII | Per capita LII (yuan) | 2523.900 | 3217.100 | 185.595 | 18,807.080 | |
PII | Per capita PII (yuan) | 1.560 | 1.354 | 0.113 | 8.573 | ||
Control variables | Job-related migration level | Number of migrant laborers/aggregate laborers (%) | 31.440 | 9.480 | 6.470 | 54.890 | |
Education level | Average number of years of education for rural population (years) | 7.779 | 0.650 | 5.878 | 10.118 | ||
Economic development level | Per capita GDP (Ten thousand yuan) | 3.608 | 2.039 | 0.538 | 11.932 | ||
Urbanization level | Urbanization rate (%) | 58.182 | 13.039 | 29.110 | 89.600 | ||
Cultivated land endowment | Area of cultivated land managed by households/number of people in rural population (mu *) | 2.733 | 2.156 | 0.162 | 13.756 | ||
Openness level | Total import and export volume/GDP (%) | 26.488 | 28.088 | 0.715 | 154.937 | ||
Agricultural development level | Gross agricultural production/GDP (%) | 12.436 | 6.933 | 0.280 | 41.530 |
Variable Name | Year | Area (Ten Thousand km2) | Center Point Coordinates | Minor Axis (km) | Major Axis (km) | Flattening (Unitless) | Declination (°) |
---|---|---|---|---|---|---|---|
LII | 2007 | 249.969 | 115°54′ E, 35°28′ N | 871.350 | 913.152 | 0.046 | 170.098 |
2015 | 265.890 | 114° 37′ E, 35°5′ N | 849.830 | 995.910 | 0.147 | 22.455 | |
2022 | 299.524 | 113°52′ E, 4°15′ N | 913.901 | 1043.236 | 0.124 | 31.304 | |
PII | 2007 | 467.778 | 112°24′ E, 37°1′ N | 1335.249 | 1115.135 | 0.165 | 51.183 |
2015 | 365.961 | 112°53′ E, 36°52′ N | 948.408 | 1228.257 | 0.228 | 40.147 | |
2022 | 431.703 | 112°21′ E, 35°39′ N | 1126.123 | 1220.251 | 0.077 | 44.408 | |
Villagers’ income | 2007 | 333.213 | 113°41′ E, 33°44′ N | 946.037 | 1121.150 | 0.156 | 22.577 |
2015 | 337.494 | 113°52′ E, 33°51′ N | 950.696 | 1129.989 | 0.159 | 24.812 | |
2022 | 339.613 | 114°12′ E, 33°58′ N | 960.270 | 1125.747 | 0.147 | 24.769 |
Variable Name | Villagers’ Income | Villagers’ Wage Income | Villagers’ Non-Wage Income |
---|---|---|---|
4 × 10−5 *** (8 × 10−6) | 5 × 10−5 *** (6 × 10−6) | −8 × 10−6 (5 × 10−6) | |
0.046 *** (0.008) | 0.019 *** (0.006) | 0.027 *** (0.005) | |
0.004 ** (0.002) | 0.003 ** (0.001) | 0.001 (0.001) | |
0.127 *** (0.026) | 0.071 *** (0.019) | 0.056 *** (0.010) | |
0.110 *** (0.010) | 0.055 *** (0.008) | 0.055 *** (0.007) | |
0.013 *** (0.002) | 0.003 ** (0.002) | 0.010 *** (0.001) | |
−0.020 ** (0.009) | −0.051 *** (0.007) | 0.031 *** (0.006) | |
−0.005 *** (0.001) | −0.004 *** (0.001) | −0.001 (0.001) | |
0.005 ** (0.003) | 0.007 *** (0.002) | −0.002 (0.002) | |
_cons | −1.387 *** (0.208) | −0.607 *** (0.154) | −0.780 *** (0.136) |
F(9, 411) = 575.25 *** | F(9, 411) = 245.27 *** | F(9, 411) = 403.84 *** |
Variable Name | Villagers’ Income | Villagers’ Wage Income | Villagers’ Non-Wage Income |
---|---|---|---|
10% quantile | |||
2 × 10−5 (2 × 10−5) | 4 × 10−5 ** (2 × 10−5) | −9 × 10−6 (1 × 10−5) | |
0.025 (0.022) | 0.012 (0.013) | 0.015 (0.013) | |
25% quantile | |||
3 × 10−5 * (2 × 10−5) | 4 × 10−5 *** (1 × 10−5) | −8 × 10−6 (1 × 10−5) | |
0.033 ** (0.017) | 0.015 (0.009) | 0.020 ** (0.009) | |
50% quantile | |||
4 × 10−5 *** (1 × 10−5) | 5 × 10−5 *** (8 × 10−6) | −8 × 10−6 (8 × 10−6) | |
0.046 *** (0.012) | 0.019 *** (0.006) | 0.027 *** (0.007) | |
75% quantile | |||
5 × 10−5 *** (1 × 10−5) | 6 × 10−5 *** (1 × 10−5) | −7 × 10−6 (1 × 10−5) | |
0.058 *** (0.015) | 0.024 *** (0.008) | 0.034 *** (0.011) | |
90% quantile | |||
7 × 10−5 *** (2 × 10−5) | 6 × 10−5 *** (1 × 10−5) | −7 × 10−6 (2 × 10−5) | |
0.068 *** (0.022) | 0.026 ** (0.011) | 0.039 *** (0.001) | |
Control variables are controlled. |
Related Tests | Value | p-Value |
---|---|---|
LR test (SDM degenerates to SEM) | 376.85 | 0.000 |
LR test (SDM degenerates to SAR) | 262.23 | 0.000 |
AIC value of SDM | −1101.865 | - |
AIC value of SEM | −743.017 | - |
AIC value of SAR | −857.632 | - |
Hausman test | 17.76 | 0.038 |
Variable Name | Direct Effect | Indirect Effect | Total Effect |
---|---|---|---|
4 × 10−5 *** (5 × 10−6) | 6 × 10−5 *** (1 × 10−5) | 1 × 10−4 *** (1 × 10−5) | |
−0.011 ** (0.005) | 0.035 *** (0.012) | 0.024 * (0.013) | |
−0.004 *** (0.001) | 0.017 *** (0.003) | 0.013 *** (0.003) | |
0.011 (0.016) | 0.028 (0.037) | 0.039 (0.043) | |
0.071 *** (0.007) | −0.042 *** (0.016) | 0.029 (0.019) | |
−0.008 *** (0.002) | 0.024 *** (0.003) | 0.016 *** (0.003) | |
−0.025 *** (0.007) | 0.048 *** (0.013) | 0.023 (0.016) | |
0.001 (0.001) | −0.002 * (0.001) | −0.002 (0.001) | |
0.006 *** (0.002) | −0.020 *** (0.004) | −0.015 *** (0.005) | |
Rho | 0.289 *** (0.049) | Log-likelihood | 684.616 |
Variable Name | Low Level of Job-Related Migration | High Level of Job-Related Migration | Low Level of Education | High Level of Education |
---|---|---|---|---|
5 × 10−5 *** (1 × 10−5) | −2 × 10−6 (1 × 10−5) | 1 × 10−5 (1 × 10−5) | 4 × 10−5 *** (1 × 10−5) | |
0.037 *** (0.011) | 0.041 *** (0.008) | 0.084 *** (0.010) | 0.032 *** (0.011) | |
- | - | −0.002 (0.002) | 0.010 *** (0.003) | |
0.193 *** (0.036) | 0.018 (0.026) | - | - | |
0.096 *** (0.014) | 0.135 *** (0.013) | 0.084 *** (0.013) | 0.136 *** (0.014) | |
0.026 *** (0.003) | 0.015 *** (0.002) | 0.020 *** (0.002) | 0.020 *** (0.004) | |
−0.029 ** (0.013) | −0.002 (0.011) | −0.018 * (0.009) | −0.145 *** (0.040) | |
−0.006 *** (0.001) | 2 × 10−4 (0.001) | 0.003 *** (0.001) | −0.004 *** (0.001) | |
0.020 *** (0.004) | −0.001 (0.002) | −0.001 (0.003) | 0.003 (0.004) | |
_cons | −2.668 *** (0.331) | −0.550 *** (0.200) | −0.599 *** (0.110) | −0.803 *** (0.220) |
F(8, 188) = 294.53 *** | F(8, 216) = 703.06 *** | F(8, 216) = 516.32 *** | F(8, 188) = 310.17 *** |
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Yuan, S.; Wang, X. Increase or Reduce: How Does Rural Infrastructure Investment Affect Villagers’ Income? Agriculture 2024, 14, 2296. https://doi.org/10.3390/agriculture14122296
Yuan S, Wang X. Increase or Reduce: How Does Rural Infrastructure Investment Affect Villagers’ Income? Agriculture. 2024; 14(12):2296. https://doi.org/10.3390/agriculture14122296
Chicago/Turabian StyleYuan, Shichao, and Xizhuo Wang. 2024. "Increase or Reduce: How Does Rural Infrastructure Investment Affect Villagers’ Income?" Agriculture 14, no. 12: 2296. https://doi.org/10.3390/agriculture14122296
APA StyleYuan, S., & Wang, X. (2024). Increase or Reduce: How Does Rural Infrastructure Investment Affect Villagers’ Income? Agriculture, 14(12), 2296. https://doi.org/10.3390/agriculture14122296