Does Digital Finance Increase Relatively Large-Scale Farmers’ Agricultural Income through the Allocation of Production Factors? Evidence from China
Abstract
:1. Introduction
2. Literature Review and Hypothesis
2.1. Digital Finance, Agriculture, and Agricultural Income
2.2. The Mediating Role of Agricultural Capital, Agricultural Workforce, and Agricultural Land
3. Research Design
3.1. Data Sources
3.2. Variables
3.2.1. The Dependent Variable
3.2.2. The Core Independent Variable
3.2.3. The Mediating Variables
3.2.4. The Control Variables
3.3. Method
4. Empirical Results
4.1. Main Findings of Basic Regression
4.2. Endogenous Problem and Robustness Test
4.2.1. Endogenous Problems
4.2.2. Robustness Test
4.3. Mediation Effect Analysis
5. Heterogeneity
5.1. Heterogeneity Analysis Based on Agricultural Services
5.2. Heterogeneity Analysis Based on Human Capital
5.3. Heterogeneity Analysis Based on Breeding Industry, Grain Crop, and Cash Crop
6. Conclusions and Discussions
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Conflicts of Interest
References
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Variables | Definition | Mean | S.D |
---|---|---|---|
Dependent Variable | |||
Gross margin | The natural logarithm of the difference between total agricultural income and total agricultural operation cost | 9.2085 | 1.6973 |
Core Independent Variable | |||
Digital finance | Digital financial inclusion index. | 184.7302 | 27.2802 |
Mediation Variable | |||
Agricultural capital | The natural logarithm of the total cost of agricultural operation. | 8.8677 | 1.1907 |
Agricultural workforce | The number of people engaged in agricultural production for more than three months within one year. | 2.0904 | 0.8633 |
Agricultural land | The natural logarithm of the land is used to cultivate crops and animal husbandry. | 3.0871 | 0.7682 |
Individual Level | |||
Gender | Men = 1, Women = 0. | 0.9135 | 0.2811 |
Age | The family decision maker’s age. | 52.4373 | 10.1482 |
Education | No schooling = 1, Primary school = 2, Junior high school = 3, High school = 4, University degree or above = 5. | 2.5771 | 0.8093 |
Health | The family decision maker’s health status. Very unhealthy = 1, Moderately unhealthy = 2, General = 3, Healthy = 4, Very healthy = 5 | 3.5973 | 0.1000 |
Family Level | |||
Size | The number of members. | 4.9640 | 2.1066 |
Female | The percentage of women in the family. | 48.7483 | 14.3049 |
Depend | The proportion of young people aged 0-14 and the elderly persons over 65 in the family. | 23.7897 | 21.1900 |
Status | The number of Communist Party or democratic party members in the family. | 0.2158 | 0.5260 |
Mode | 1 if partially or fully mechanized farming, 0 otherwise. | 0.7911 | 0.4066 |
Farm type | Crop farming = 1, Breeding industry = 0 | 0.9546 | 0.2082 |
Village Level | |||
Non-agricultural industry | 1 if there is a non-agricultural industry in this village, 0 otherwise. | 0.1153 | 0.3194 |
Bank | 1 if there is a bank facility, 0 otherwise. | 0.9564 | 0.2042 |
Distance | The natural logarithm of the distance from the village to the county center. | 2.1678 | 0.9121 |
Service | 1 if the village provide agricultural services, 0 otherwise | 0.7727 | 0.4192 |
Prefecture Level | |||
Primary industry | The ratio of the primary industry to total GDP in each city. | 13.6011 | 7.3486 |
Variables | Gross Margin |
---|---|
Digital finance | 0.0231 *** (0.0030) |
Gender | 0.0403(0.1245) |
Age | −0.0088 *** (0.0034) |
Education | 0.0825 * (0.0452) |
Health | 0.1605 *** (0.0310) |
Size | 0.0019(0.0142) |
Female | 0.0014(0.0026) |
Depend | −0.0070 *** (0.0014) |
Status | 0.1494 *** (0.0496) |
Mode | 0.2520 *** (0.0808) |
Farm type | −0.3215 * (0.1637) |
Non-agricultural industry | −0.0507 (0.1177) |
Bank | 0.0015 (0.1230) |
Distance | −0.0696 (0.0495) |
Service | −0.0923 (0.0913) |
Primary industry | 0.0199 *** (0.0066) |
Time fixed effects | Yes |
Constant | 4.9886 *** (0.6624) |
Observations | 2776 |
R-squared | 0.0675 |
(1) The First Stage | (2) The Second Stage | |
---|---|---|
Digital Finance | Agricultural Income | |
IV | 0.2002 *** (0.0189) | |
Digital finance | 0.0500 *** (0.0150) | |
Control variables | Yes | Yes |
Year fixed effects | Yes | Yes |
Cragg–Wald F statistic | 128.594 | |
10% max IV size | 16.38 | |
Observations | 2766 | 2766 |
Gross Margin | ||
---|---|---|
(1) Substitute Independent Variable | (2) Eliminate Extreme Values | |
One-period-lagged | 0.0249 *** (0.0031) | |
Digital finance | 0.0229 *** (0.0030) | |
Control variables | Yes | Yes |
Year fixed effects | Yes | Yes |
Observations | 2766 | 2766 |
R-squared | 0.0704 | 0.0675 |
Gross Margin | ||
---|---|---|
(1) Confirmation of Agricultural Land Rights | (2) Organize Labor to Go Out to Work | |
Digital finance | 0.0251 *** (0.0032) | 0.0219 *** (0.0031) |
Control variables | Yes | Yes |
Year fixed effects | Yes | Yes |
Observations | 2766 | 2766 |
R-squared | 0.0833 | 0.0688 |
(1) Agricultural Income | (2) Agricultural Capital | (3) Agricultural Workforce | (4) Agricultural Land | |
---|---|---|---|---|
Digital Finance | 0.0157 *** | 0.0177 *** (0.0020) | −0.0042 *** | 0.0058 *** |
(0.0019) | (0.0015) | (0.0012) | ||
Control variables | Yes | Yes | Yes | Yes |
Constant | 7.2000 *** | 6.7766 *** | 2.2647 *** | 1.7733 *** |
(0.4125) | (0.4233) | (0.3130) | (0.2717) | |
Year fixed effects | Yes | Yes | Yes | Yes |
Observations | 2776 | 2776 | 2766 | 2776 |
R-squared | 0.1346 | 0.1399 | 0.0809 | 0.1006 |
Agricultural Income | |||
---|---|---|---|
(1) | (2) | (3) | |
Digital Finance | 0.0035 *** | 0.0161 *** | 0.0123 *** |
(0.0013) | (0.0018) | (0.0017) | |
Agricultural Capital | 0.6900 *** | ||
(0.0161) | |||
Agricultural Workforce | 0.0940 *** | ||
(0.0262) | |||
Agricultural Land | 0.5966 *** | ||
(0.0287) | |||
Control variables | Yes | Yes | Yes |
Year fixed effects | Yes | Yes | Yes |
Constant | 2.5243 *** | 6.9872 *** | 6.1420 *** |
(0.3306) | (0.4150) | (0.3923) | |
Sobel Z | 8.771 *** | −2.266 ** | 4.368 *** |
The ratio of mediation effect | 77.48% | 2.50% | 22.10% |
Observations | 2776 | 2776 | 2776 |
R-squared | 0.5721 | 0.1392 | 0.2770 |
Gross Margin | ||||
---|---|---|---|---|
(1) Receiving Service | (2) No Service | (3) Receiving Skill Training | (4) No Skill Training | |
Digital finance | 0.0274 *** (0.0063) | 0.0217 *** (0.0033) | 0.0229 *** (0.0040) | 0.0175 *** (0.0047) |
Control variables | Yes | Yes | Yes | Yes |
Constant | 3.0818 *** | 5.6774 *** | 4.8823 *** | 5.9753 *** |
(1.3707) | (0.7395) | (0.9096) | (1.0387) | |
Year fixed effects | Yes | Yes | Yes | Yes |
Observations | 524 | 2252 | 1543 | 1233 |
R-squared | 0.1546 | 0.0616 | 0.0749 | 0.0825 |
Gross Margin | |||
---|---|---|---|
(1) Breeding | (2) Grain Crop | (3) Cash Crop | |
Digital finance | −0.0062 (0.0258) | 0.0037 (0.0044) | 0.0457 *** (0.0138) |
Control variables | Yes | Yes | Yes |
Constant | 8.6918 *** (4.6717) | 6.6769 *** (0.9121) | 4.3803 *** (2.9828) |
Year fixed effects | Yes | Yes | Yes |
Observations | 317 | 2773 | 647 |
R-squared | 0.0657 | 0.1974 | 0.1645 |
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Song, K.; Tang, Y.; Zang, D.; Guo, H.; Kong, W. Does Digital Finance Increase Relatively Large-Scale Farmers’ Agricultural Income through the Allocation of Production Factors? Evidence from China. Agriculture 2022, 12, 1915. https://doi.org/10.3390/agriculture12111915
Song K, Tang Y, Zang D, Guo H, Kong W. Does Digital Finance Increase Relatively Large-Scale Farmers’ Agricultural Income through the Allocation of Production Factors? Evidence from China. Agriculture. 2022; 12(11):1915. https://doi.org/10.3390/agriculture12111915
Chicago/Turabian StyleSong, Kun, Yu Tang, Dungang Zang, Hua Guo, and Wenting Kong. 2022. "Does Digital Finance Increase Relatively Large-Scale Farmers’ Agricultural Income through the Allocation of Production Factors? Evidence from China" Agriculture 12, no. 11: 1915. https://doi.org/10.3390/agriculture12111915
APA StyleSong, K., Tang, Y., Zang, D., Guo, H., & Kong, W. (2022). Does Digital Finance Increase Relatively Large-Scale Farmers’ Agricultural Income through the Allocation of Production Factors? Evidence from China. Agriculture, 12(11), 1915. https://doi.org/10.3390/agriculture12111915