Impact of Rural E-Commerce on Farmers’ Income and Income Gap
Abstract
:1. Introduction
2. Theoretical Analysis and Hypotheses
2.1. Rural e-Commerce and Farm Household Income
2.2. Rural e-Commerce and Intra-Rural Income Disparities
3. Research Design
3.1. Data Sources
3.2. Description of Variables
3.3. Model Setting
4. Empirical Results and Analyses
4.1. Benchmark Regression Results
4.2. Endogeneity Treatment
4.3. Robustness Test
4.4. Quantile Regression
5. Further Analyses
5.1. Heterogeneity Test
5.1.1. Based on Farm Household Heterogeneity
- (1)
- Based on human capital
- (2)
- Based on Physical Capital
- (3)
- Based on social capital
- (4)
- Distinguishing financial capital
5.1.2. Analysis Based on Regional Heterogeneity
5.2. Analysis of Impact Mechanisms
5.2.1. Weakening Market Information Asymmetry
5.2.2. Shorten the Product Circulation Link
5.2.3. Promote Agricultural Cost-Saving and Efficiency
6. Conclusions and Insights
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Conflicts of Interest
References
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Variables | Define | Observations | Mean | Variance |
---|---|---|---|---|
Ecom | Participation in e-commerce: yes = 1, no = 0 | 2910 | 9.382609 | 1.062979 |
Lnperincome | Per capita net income of farm household (CNY), taken in logarithms | 2910 | 1.067354 | 0.2506771 |
Age | Age | 2910 | 55.54639 | 11.09463 |
Agesquare | Age squared divided by 100 | 2910 | 32.0845 | 12.42666 |
Edu | Educational attainment: no schooling = 1; primary school = 2; junior high school = 3; senior high school = 4; junior college = 5; vocational high school and technical school = 6; specialist = 7; undergraduate = 8; postgraduate = 9 | 2910 | 2.762887 | 1.078939 |
Famsize | Number of family members | 2910 | 3.99244 | 1.54522 |
Mage | Average age of household members | 2910 | 43.24033 | 13.36191 |
Maxserv | Whether there are village cadres in the household: Yes = 1, No = 0 | 2910 | 1.724055 | 1.417784 |
Maxedu | Highest level of education of household members: No schooling = 1; Primary school = 2; Junior high school = 3; High school = 4; Secondary school = 5; Vocational high school = 6; Specialty = 7; Undergraduate school = 8; Postgraduate school = 9 | 2910 | 4.635395 | 2.162698 |
Transport | Village traffic conditions: whether the roads between the village and the group are hardened roads or not | 2910 | 1.057045 | 0.2319678 |
Ecomconditions | Village e-commerce infrastructure: whether there is an e-commerce service station or product resale point in the village | 2910 | 1.471478 | 0.4992716 |
Distance | Distance from the village committee to the county government (kilometers) | 2910 | 23.78271 | 17.36853 |
Lngdp | Village economic conditions: per capita disposable income of the village in 2019 (take logarithm) | 2910 | 9.432598 | 0.5431103 |
Variables | Lnperincome | Lnperincome | Lnperincome | Lnperincome |
---|---|---|---|---|
(1) | (2) | (3) | (4) | |
Ecom | 0.700 *** | 0.582 *** | 0.568 *** | 0.516 *** |
(0.0837) | (0.082) | (0.081) | (0.080) | |
Gender | 0.154 ** | 0.083 | 0.061 | |
(0.076) | (0.075) | (0.074) | ||
Age | 0.030 ** | 0.015 | 0.014 | |
(0.013) | (0.013) | (0.013) | ||
Agesquare | −0.041 *** | −0.027 ** | −0.026 ** | |
(0.012) | (0.012) | (0.011) | ||
Edu | 0.100 *** | 0.055 *** | 0.041** | |
(0.019) | (0.019) | (0.019) | ||
Famsize | −0.111 *** | −0.105 *** | ||
(0.017) | (0.016) | |||
Mage | −0.003 | −0.003 | ||
(0.002) | (0.002) | |||
Maxserv | 0.055 *** | 0.046 *** | ||
(0.013) | (0.013) | |||
Maxedu | 0.060 *** | 0.047 *** | ||
(0.010) | (0.010) | |||
Transport | −0.218 *** | |||
(0.081) | ||||
Ecomconditions | 0.060 | |||
(0.037) | ||||
Distance | 0.001 | |||
(0.001) | ||||
Lngdp | 0.354 *** | |||
(0.035) | ||||
Constant | 0.342888 | 8.550 *** | 9.292 *** | 6.272 *** |
(0.0201) | (0.382) | (0.393) | (0.522) | |
Observations | 2910 | 2910 | 2910 | 2910 |
R-squared | 0.023 | 0.073 | 0.102 | 0.139 |
Variables | Lnperincome | |
---|---|---|
Phase I | Phase II | |
Ecom | 1.077 *** (0.475) | |
Instrumental variables IV | 0.441 *** (0.070) | |
Control variables | Controlled | Controlled |
F-statistic | 110.53 | |
DWH test χ2 | 6.68 | |
p-value | 0.0097 | |
Observations | 2910 |
Matching Method | Intervention Group | Control Group | Mean Treatment Effect |
---|---|---|---|
One-to-one matching | 10.042 | 9.746 | 0.295 *** |
k-nearest-neighbor matching | 10.040 | 9.741 | 0.300 *** |
Radius Matching | 10.040 | 9.458 | 0.582 *** |
Kernel Matching | 10.040 | 9.466 | 0.574 *** |
Matching Method | Lnperincome | lnPerOperation | ||||
---|---|---|---|---|---|---|
Sales | 0.0288 *** (0.00515) | 0.0292 *** (0.00507) | 0.0272 *** (0.00498) | |||
Ecom | 1.065 *** (0.151) | 1.038 *** (0.150) | 0.970 *** (0.148) | |||
Head of Household Controls | Controlled | Controlled | Controlled | Controlled | Controlled | Controlled |
Household Controls | Controlled | Controlled | Controlled | Controlled | ||
Village Controls | Controlled | Controlled | ||||
Constant | 8.800 *** (0.367) | 8.800 *** (0.375) | 8.800 *** (0.513) | 8.915 *** (0.735) | 9.715 *** (0.760) | 6.529 *** (1.020) |
Observations | 2910 | 2910 | 2910 | 1770 | 1770 | 1770 |
R-squared | 10.040 | 9.466 | 0.574 *** | 0.079 | 0.079 | 0.079 |
Type of Farm Household | Treatment Effect | |
---|---|---|
ATT | ATU | |
Participating e-commerce farmers | 10.042 | 9.746 |
Non-participating e-commerce farmers | 10.040 | 9.466 |
Variables | Lnperincome | |||||
---|---|---|---|---|---|---|
10% | 30% | 50% | 70% | 90% | Lnperincome | |
Ecom | 0.742 *** | 0.505 *** | 0.415 *** | 0.443 *** | 0.518 *** | 0.516 *** |
(−0.188) | (−0.109) | (−0.0909) | (−0.0747) | (−0.134) | −0.0744 | |
Gender | −0.0785 | 0.0515 | 0.175 ** | 0.141 ** | 0.0762 | 0.0606 |
(−0.175) | (−0.101) | (−0.0842) | (−0.0693) | (−0.125) | −0.0802 | |
Age | −0.00535 | 0.0103 | 0.00599 | 0.0168 | 0.0454 ** | 0.014 |
(−0.0301) | (−0.0174) | (−0.0145) | (−0.012) | (−0.0215) | −0.0115 | |
Agesquare | −0.0162 | −0.0243 | −0.0161 | −0.0231 ** | −0.0519 *** | −0.0262 ** |
(−0.0269) | (−0.0156) | (−0.013) | (−0.0107) | (−0.0192) | −0.0102 | |
Edu | −0.00117 | 0.0405 | 0.0519 ** | 0.0524 *** | 0.0593 * | 0.0412 ** |
(−0.0453) | (−0.0262) | (−0.0218) | (−0.018) | (−0.0323) | −0.0194 | |
Famsize | −0.145 *** | −0.125 *** | −0.109 *** | −0.0929 *** | −0.104 *** | −0.105 *** |
(−0.0383) | (−0.0222) | (−0.0185) | (−0.0152) | (−0.0274) | −0.0166 | |
Mage | 0.00233 | −0.00562* | −0.00497* | −0.00759 *** | −0.00651 | −0.00328 |
(−0.0057) | (−0.0033) | (−0.00275) | (−0.00226) | (−0.00407) | −0.00226 | |
Maxserv | 0.0771 ** | 0.0588 *** | 0.0471 *** | 0.0380 *** | 0.0262 | 0.0462 *** |
(−0.031) | (−0.018) | (−0.015) | (−0.0123) | (−0.0222) | −0.0127 | |
Maxedu | 0.0338 | 0.0405 *** | 0.0509 *** | 0.0519 *** | 0.0629 *** | 0.0466 *** |
(−0.023) | (−0.0133) | (−0.0111) | (−0.00913) | (−0.0164) | −0.01 | |
Transport | −0.172 | −0.264 ** | −0.185** | −0.148 * | −0.144 | −0.218 *** |
(−0.19) | (−0.11) | (−0.0918) | (−0.0755) | (−0.136) | −0.0825 | |
Ecomconditions | −12 | 0.0857 * | 0.0821* | 0.0982 *** | 0.114 * | 0.0596 |
(−0.0871) | (−0.0504) | (−0.042) | (−0.0346) | (−0.0622) | −0.0373 | |
Distance | 0.000957 | 0.000245 | 0.00124 | 0.00261 ** | 0.000807 | 0.00144 |
(−0.00256) | (−0.00148) | (−0.00124) | (−0.00102) | (−0.00183) | −0.00105 | |
Lngdp | 0.266 *** | 0.325 *** | 0.370 *** | 0.392 *** | 0.433 *** | 0.354 *** |
(−0.0834) | (−0.0483) | (−0.0403) | (−0.0331) | (−0.0596) | −0.039 | |
Constant | 6.878 *** | 6.498 *** | 6.210 *** | 6.028 *** | 5.614 *** | 6.272 *** |
(−1.229) | (−0.712) | (−0.593) | (−0.488) | (−0.878) | −0.512 | |
Observations | 2910 | 2910 | 2910 | 2910 | 2910 | 2910 |
R-squared | 0.139 |
Variables | Lnperincome | ||||||
---|---|---|---|---|---|---|---|
10% | 30% | 50% | 70% | 90% | Lnperincome | ||
Lower-Education Group | Ecom | 0.820 ** | 0.735 *** | 0.461 ** | 0.557 *** | 0.339 | 0.644 *** |
(−0.327) | (−0.23) | (−0.189) | (−0.151) | (−0.276) | (−0.162) | ||
Controls | Controlled | Controlled | Controlled | Controlled | Controlled | Controlled | |
Constant | 6.858 *** | 6.722 *** | 6.489 *** | 6.323 *** | 7.092 *** | 6.368 *** | |
(−1.616) | (−1.133) | (−0.934) | (−0.745) | (−1.361) | (−0.8) | ||
Observations | 1214 | 1214 | 1214 | 1214 | 1214 | 1214 | |
R-squared | 0.118 | ||||||
Middle-Education Group | Ecom | 0.285 | 0.404 ** | 0.348 ** | 0.226 * | 0.398 ** | 0.404 *** |
(−0.298) | (−0.182) | (−0.167) | (−0.129) | (−0.202) | (−0.139) | ||
Controls | Controlled | Controlled | Controlled | Controlled | Controlled | Controlled | |
Constant | 9.056 *** | 8.766 *** | 6.850 *** | 7.032 *** | 6.723 *** | 7.429 *** | |
(−2.277) | (−1.392) | (−1.274) | (−0.988) | (−1.545) | (−1.064) | ||
Observations | 808 | 808 | 808 | 808 | 808 | 808 | |
R-squared | 0.099 | ||||||
Higher-Education Group | Ecom | 0.701 ** | 0.493 *** | 0.439 *** | 0.484 *** | 0.593 *** | 0.540 *** |
(−0.348) | (−0.178) | (−0.149) | (−0.147) | (−0.196) | (−0.126) | ||
Controls | Controlled | Controlled | Controlled | Controlled | Controlled | Controlled | |
Constant | 4.860 * | 6.358 *** | 6.730 *** | 6.611 *** | 5.940 *** | 6.682 *** | |
(−2.866) | (−1.466) | (−1.224) | (−1.205) | (−1.615) | (−1.035) | ||
Observations | 888 | 888 | 888 | 888 | 888 | 888 | |
R-squared | 0.155 |
Variables | Lnperincome | ||||||
---|---|---|---|---|---|---|---|
10% | 30% | 50% | 70% | 90% | Lnperincome | ||
Low-Physical-Capital Group | Ecom | 0.666 *** | 0.518 *** | 0.383 *** | 0.404 *** | 0.544 *** | 0.511 *** |
(−0.226) | (−0.136) | (−0.102) | (−0.101) | (−0.159) | (−0.1) | ||
Controls | Controlled | Controlled | Controlled | Controlled | Controlled | Controlled | |
Constant | 6.640 *** | 5.721 *** | 5.178 *** | 4.924 *** | 4.850 *** | 5.570 *** | |
(−1.635) | (−0.985) | (−0.739) | (−0.733) | (−1.148) | (−0.723) | ||
Observations | 1454 | 1454 | 1454 | 1454 | 1454 | 1454 | |
R-squared | 0.189 | ||||||
High-physical-capital group | Ecom | 0.708 ** | 0.555 *** | 0.503 *** | 0.519 *** | 0.488 * | 0.531 *** |
(−0.312) | (−0.191) | (−0.153) | (−0.122) | (−0.258) | (−0.134) | ||
Controls | Controlled | Controlled | Controlled | Controlled | Controlled | Controlled | |
Constant | 7.317 *** | 7.311 *** | 7.945 *** | 8.114 *** | 7.966 *** | 7.300 *** | |
(−1.804) | (−1.104) | (−0.884) | (−0.703) | (−1.492) | (−0.775) | ||
Observations | 1456 | 1456 | 1456 | 1456 | 1456 | 1456 | |
R-squared | 0.096 |
Variables | Lnperincome | ||||||
---|---|---|---|---|---|---|---|
10% | 30% | 50% | 70% | 90% | Lnperincome | ||
Low-social-capital group | Ecom | 0.500 * | 0.286 | 0.383 ** | 0.256 * | 0.408 * | 0.339 ** |
(−0.261) | (−0.196) | (−0.177) | (−0.131) | (−0.238) | (−0.143) | ||
Controls | Controlled | Controlled | Controlled | Controlled | Controlled | Controlled | |
Constant | 6.922 *** | 6.268 *** | 6.348 *** | 5.751 *** | 6.982 *** | 6.108 *** | |
(−1.379) | (−1.035) | (−0.934) | (−0.694) | (−1.258) | (−0.755) | ||
Observations | 1427 | 1427 | 1427 | 1427 | 1427 | 1427 | |
R-squared | 0.076 | ||||||
High-social-capital group | Ecom | 0.500 ** | 0.492 *** | 0.394 *** | 0.469 *** | 0.450 *** | 0.511 *** |
(−0.194) | (−0.118) | (−0.098) | (−0.108) | (−0.163) | (−0.095) | ||
Controls | Controlled | Controlled | Controlled | Controlled | Controlled | Controlled | |
Constant | 7.486 *** | 7.917 *** | 7.268 *** | 6.615 *** | 6.838 *** | 7.236 *** | |
(−1.47) | (−0.894) | (−0.742) | (−0.818) | (−1.231) | (−0.719) | ||
Observations | 1483 | 1483 | 1483 | 1483 | 1483 | 1483 | |
R-squared | 0.155 |
Variables | Lnperincome | ||||||
---|---|---|---|---|---|---|---|
10% | 30% | 50% | 70% | 90% | Lnperincome | ||
Low-financial-capital group | Ecom | 0.426 | 0.116 | 0.495 * | 0.216 | −0.0231 | 0.255 |
(−0.521) | (−0.334) | (−0.266) | (−0.211) | (−0.326) | (−0.223) | ||
Controls | Controlled | Controlled | Controlled | Controlled | Controlled | Controlled | |
Constant | −0.367 | 5.465 ** | 4.847 ** | 6.397 *** | 4.483 * | 3.787 ** | |
(−4.124) | (−2.638) | (−2.102) | (−1.668) | (−2.575) | (−1.762) | ||
Observations | 404 | 404 | 404 | 404 | 404 | 404 | |
R-squared | 0.106 | ||||||
High-financial-capital group | Ecom | 0.724 *** | 0.541 *** | 0.426 *** | 0.489 *** | 0.528 *** | 0.542 *** |
(−0.193) | (−0.114) | (−0.096) | (−0.087) | (−0.154) | (−0.086) | ||
Controls | Controlled | Controlled | Controlled | Controlled | Controlled | Controlled | |
Constant | 7.912 *** | 7.092 *** | 6.542 *** | 5.992 *** | 6.253 *** | 6.546 *** | |
(−1.233) | (−0.727) | (−0.616) | (−0.553) | (−0.985) | (−0.548) | ||
Observations | 2506 | 2506 | 2506 | 2506 | 2506 | 2506 | |
R-squared | 0.148 |
Variables | Lnperincome | ||||||
---|---|---|---|---|---|---|---|
10% | 30% | 50% | 70% | 90% | Lnperincome | ||
Southern Region | Ecom | 0.984 *** | 0.422 *** | 0.462 *** | 0.534 *** | 0.590 *** | 0.574 *** |
(−0.245) | (−0.146) | (−0.121) | (−0.099) | (−0.145) | (−0.11) | ||
Controls | Controlled | Controlled | Controlled | Controlled | Controlled | Controlled | |
Constant | 3.537 ** | 3.088 *** | 4.514 *** | 4.137 *** | 2.679 *** | 3.950 *** | |
(−1.718) | (−1.022) | (−0.847) | (−0.69) | (−1.019) | (−0.772) | ||
Observations | 1345 | 1345 | 1345 | 1345 | 1345 | ||
R-squared | 0.174 | ||||||
Northern Region | Ecom | 0.422 * | 0.454 *** | 0.385 *** | 0.415 *** | 0.389 * | 0.404 *** |
(−0.228) | (−0.162) | (−0.141) | (−0.118) | (−0.223) | (−0.118) | ||
Controls | Controlled | Controlled | Controlled | Controlled | Controlled | Controlled | |
Constant | 9.091 *** | 8.588 *** | 8.963 *** | 9.889 *** | 10.44 *** | 8.806 *** | |
(−1.421) | (−1.01) | (−0.879) | (−0.733) | (−1.388) | (−0.734) | ||
Observations | 1565 | 1565 | 1565 | 1565 | 1565 | ||
R-squared | 0.124 |
Variables | Information | Link | Cost |
---|---|---|---|
Ecom | 0.122 *** | −0.181 *** | 0.214 *** |
(−0.021) | (−0.029) | (−0.035) | |
Controls | Controlled | Controlled | Controlled |
Constant | −0.158 | 2.194 *** | 0.273 |
(−0.134) | (−0.216) | (−0.221) | |
Observations | 2910 | 1520 | 2832 |
R-squared | 0.064 | 0.042 | 0.124 |
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Guan, X.; He, L.; Hu, Z. Impact of Rural E-Commerce on Farmers’ Income and Income Gap. Agriculture 2024, 14, 1689. https://doi.org/10.3390/agriculture14101689
Guan X, He L, Hu Z. Impact of Rural E-Commerce on Farmers’ Income and Income Gap. Agriculture. 2024; 14(10):1689. https://doi.org/10.3390/agriculture14101689
Chicago/Turabian StyleGuan, Xin, Lei He, and Zhiquan Hu. 2024. "Impact of Rural E-Commerce on Farmers’ Income and Income Gap" Agriculture 14, no. 10: 1689. https://doi.org/10.3390/agriculture14101689
APA StyleGuan, X., He, L., & Hu, Z. (2024). Impact of Rural E-Commerce on Farmers’ Income and Income Gap. Agriculture, 14(10), 1689. https://doi.org/10.3390/agriculture14101689