The Non-Linear Relationship between the Number of Permanent Residents and the Willingness of Rural Residential Land Transfer: The Threshold Effect of per Capita Net Income
Abstract
:1. Introduction
2. Theoretical Framework
2.1. Willingness to Live in Rural Areas, the Number of Permanent Residents and Willingness to Transfer Rural Residential Land
2.2. Willingness to Live in City Areas, the Number of Permanent Residents and Willingness to Transfer Rural Residential Land
3. Data and Methodology
3.1. Study Area
3.2. Data
3.3. Variables
- (1)
- Categorical variable: Farmers are classified into two categories based on their willingness to live in city areas. “Yes” indicates farmers who are willing to live in city areas, while “No” indicates farmers who prefer to live in rural areas. This variable is categorical and is not used in regression equations.
- (2)
- Dependent variable: When examining the influence of household per capita net income and the number of permanent residents on the intention to transfer rural residential land, the dependent variable is the intention to transfer in. A value of ”0” represents no intention to transfer, while a value of “1” represents the intention to transfer. When studying the impact of household per capita net income and the number of permanent residents on the intention to transfer out rural residential land, the dependent variable is the intention to transfer out. A value of 0 represents no intention to transfer out, while a value of 1 represents the intention to transfer out.
- (3)
- Independent variable: The independent variable is the number of permanent residents, defined as “the number of individuals who have resided in rural residential land for at least 6 months in a year,” which follows the commonly adopted definition in the academic community [36]. This variable is of a discrete type.
- (4)
- Threshold variable: Considering the differences in household consumption levels, this study adopts household per capita net income as the threshold variable, which is represented by the ratio of annual net income to household population.
- (5)
- Control variables: Drawing from relevant literature [27,46,51,52,53], control variables are selected from three aspects: individual characteristics of farmers, household characteristics, and village characteristics. Individual characteristics include variables such as gender, age, years of education, and health condition. Household characteristics include variables such as the number of labor force members, rural residential land area, main sources of income, the number of sources of income, the number of children, and the area of farmland. Village characteristics include variables such as village types, village area, the distance from the county town, and the development of non-agricultural industries.
3.4. Model
3.4.1. Binary Probit Model
3.4.2. Threshold Regression Models for Cross-sectional Data
4. Results and Analysis
4.1. Observations Characteristics
4.2. Baseline Regression Analysis
4.3. Robustness Test
4.4. Estimation Results and Analysis of Threshold Effects
4.4.1. Threshold Estimation Results for Farmers’ Willing to Live in Rural Areas
4.4.2. Threshold Estimation Results for Farmers’ Willing to Live in City Areas
5. Discussion
5.1. Main Findings
5.2. Policy Suggestions
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Variable Type | Variable | Variable Definition (Assignment) | Mean | Standard Deviation |
---|---|---|---|---|
Categorical variable | Farmers’ willingness to live in urban areas | 0 = unwilling, 1 = willing | 0.466 | 0.499 |
Dependent variable | Farmers’ willingness to transfer out | 0 = unwilling, 1 = willing | 0.391 | 0.454 |
Farmers’ willingness to transfer in | 0 = unwilling, 1 = willing | 0.382 | 0.450 | |
Independent variable | The number of permanent residents | - | 3.760 | 2.638 |
Threshold variable | Household per capita net income | Ten thousand yuan | 4.917 | 5.134 |
Control variables | Gender | 0 = Male, 1 = Female | 1.464 | 0.499 |
Age | Years old | 47.987 | 12.557 | |
Years of education | Years | 8.966 | 6.986 | |
Health condition | 1 = Unhealthy, 2 = less healthy, 3 = average, 4 = relatively healthy, 5 = healthy | 3.959 | 1.206 | |
The number of labor force members | - | 3.940 | 2.083 | |
Rural residential land area | Square meter | 188.832 | 133.143 | |
Housing area | Square meter | 319.510 | 107.028 | |
Main sources of income | 1 = Agriculture, 2 = Part-time, 3 = Non-agriculture | 1.989 | 0.906 | |
The number of sources of income | - | 2.269 | 0.887 | |
The number of children | - | 2.563 | 1.223 | |
Farmland area | Square meter | 4.646 | 23.765 | |
Village types | 1 = Relocation and evacuation village; 2 = Characteristic protection village; 3 = Agglomeration and upgrading village; 4 = Urban-suburban integration village | 2.996 | 0.857 | |
Village area | Square kilometer | 7.396 | 6.037 | |
The distance from the county town | Kilometer | 19.232 | 9.658 | |
Development of non-agricultural industries | Ten thousand yuan | 405.094 | 871.426 |
Variables | The Transfer-In Willingness of Farmers Who Are Willing to Live in Rural | The Transfer-Out Willingness of Farmers Who Are Willing to Live in Rural | The Transfer-In Willingness of Farmers Who Are Willing to Live in City | The Transfer-Out Willingness of Farmers Who Are Willing to Live in City |
---|---|---|---|---|
(1) | (2) | (3) | (4) | |
The number of permanent residents | 0.117 *** (0.043) | −0.188 (0.258) | 0.355 (0.323) | −0.021 (0.121) |
Gender | 0.097 * (0.055) | 0.635 (0.487) | 0.598 (0.481) | 0.429 (0.352) |
Age | −0.597 * (0.330) | −0.048 ** (0.024) | 0.098 (0.266) | −0.149 ** (0.065) |
Years of education | 0.068 (0.133) | 0.039 * (0.052) | 0.442 (0.372) | 0.301 (0.232) |
Health conditions | 0.017 (0.183) | 0.062 (0.302) | −0.110 (0.146) | −0.242 (0.222) |
The number of labor force members | 0.311 *** (0.069) | 0.232 (0.488) | −0.077 (0.182) | 0.072 *** (0.016) |
Rural residential land area | −0.262 ** (0.122) | 0.019 (0.122) | −0.400 * (0.197) | 0.922 ** (0.442) |
Housing area | −0.770 *** (0.101) | −0.347 ** (0.171) | 0.244 (0.183) | −0.399 (1.221) |
Main sources of income | 0.210 (0.432) | 0.912 (0.998) | 0.445 (0.567) | 0.933 (1.077) |
The number of sources of income | 0.034 (0.542) | 0.038 (0.492) | 0.055 (0.428) | 0.030 ** (0.015) |
The number of sources of children | 0.122 *** (0.011) | −0.002 ** (0.000) | 0.085 (0.103) | 0.079 (0.122) |
Farmland area | 0.294 (0.355) | −0.230 (0.425) | 0.057 (0.598) | 0.655 (0.555) |
Village types | −0.155 *** (0.014) | 0.102 ** (0.046) | 0.131 (0.195) | 0.099 * (0.058) |
Village area | −0.644 (0.466) | −0.526 (0.491) | −0.485 (0.390) | −0.483 (0.188) |
The distance from the county town | 0.058 * (0.032) | 0.666 * (0.362) | 0.152 (0.432) | −0.041 * (0.023) |
Development of non-agricultural industries | 0.551 ** (0.225) | 0.570 *** (0.170) | −0.149 (0.341) | −0.688 (0.532) |
Constant | 0.145 ** (0.064) | 0.270 *** (0.028) | 0.260 *** (0.066) | 0.539 *** (0.199) |
Sample | 269 | 269 | 235 | 235 |
R2 | 0.329 | 0.303 | 0.335 | 0.319 |
Variables | The Transfer-In Willingness of Farmers Who Are Willing to Live in Rural | The Transfer-Out Willingness of Farmers Who Are Willing to Live in Rural | The Transfer-In Willingness of Farmers Who Are Willing to Live in City | The Transfer-Out Willingness of Farmers Who Are Willing to Live in City |
---|---|---|---|---|
(5) | (6) | (7) | (8) | |
The number of permanent residents | 0.090 ** (0.039) | −0.176 (0.339) | 0.346 (0.282) | 0.101 * (0.054) |
Control variables | Controlled | Controlled | Controlled | Controlled |
Constant | 2.025 *** (0.017) | 1.973 *** (0.060) | 1.998 *** (0.032) | 1.984 *** (0.039) |
Sample | 269 | 269 | 235 | 235 |
R2 | 0.392 | 0.377 | 0.346 | 0.319 |
Threshold Variables | Willingness to Transfer In | Willingness to Transfer Out | ||||||||
---|---|---|---|---|---|---|---|---|---|---|
Nature of Threshold | Bootstrap Times | p-Value | Threshold | Confidence Intervals | Nature of Threshold | Bootstrap Times | p-Value | Threshold | Confidence Intervals | |
Household per capita net income | Single threshold | 1000 | 0.008 | 3.53 | [0.027, 0.064] | Single threshold | 1000 | 0.136 | - | - |
Double threshold | 1000 | 0.488 | - | - |
Variables | Willingness to Transfer In | Willingness to Transfer Out | |
---|---|---|---|
(9) | (10) | (11) | |
The number of permanent residents(household per capita net income ≤ 35,300 yuan) | 0.732 (0.699) | - | - |
The number of permanent residents(household per capita net income > 35,000 yuan) | - | 1.723 ** (0.817) | - |
The number of permanent residents | - | - | 0.844 (0.752) |
Control variables | Controlled | Controlled | Controlled |
Constant | 0.138 *** (0.035) | 0.114 * (0.064) | 0.125 * (0.066) |
R2 | 0.318 | 0.323 | 0.338 |
Sample | 146 | 123 | 269 |
Threshold Variables | Willingness to Transfer In | Willingness to Transfer Out | ||||||||
---|---|---|---|---|---|---|---|---|---|---|
Nature of Threshold | Bootstrap Times | p-Value | Threshold | Confidence Intervals | Nature of Threshold | Bootstrap Times | p-Value | Threshold | Confidence Intervals | |
Household per capita net income | Single threshold | 1000 | 0.388 | - | - | Single threshold | 1000 | 0.001 | 3.78 | [0.041, 0.048] |
Double threshold | 1000 | 0.046 | 5.62 | [0.057, 0.101] | ||||||
Triple threshold | 1000 | 0.454 | - | - |
Variables | Willingness to Transfer In | Willingness to Transfer Out | ||
---|---|---|---|---|
(12) | (13) | (14) | (15) | |
The number of permanent residents | −2.565 (2.072) | - | - | - |
The number of permanent residents (household per capita net income ≤ 37,800 yuan) | - | −2.711 ** (1.088) | - | - |
The number of permanent residents (37,800 yuan < household per capita net income ≤ 56,200 yuan) | - | - | 0.598 ** (0.265) | - |
The number of permanent residents(household per capita net income > 56,200 yuan) | - | - | - | −1.058 (2.684) |
Control variables | Controlled | Controlled | Controlled | Controlled |
Constant | 0.328 ** (0.163) | −0.745 ** (0.329) | 0.195 *** (0.047) | 1.326 *** (0.099) |
R2 | 0.297 | 0.388 | 0.405 | 0.399 |
Samples | 235 | 105 | 61 | 69 |
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Zhang, Y.; Xue, K.; Cao, H.; Hu, Y. The Non-Linear Relationship between the Number of Permanent Residents and the Willingness of Rural Residential Land Transfer: The Threshold Effect of per Capita Net Income. Land 2023, 12, 1595. https://doi.org/10.3390/land12081595
Zhang Y, Xue K, Cao H, Hu Y. The Non-Linear Relationship between the Number of Permanent Residents and the Willingness of Rural Residential Land Transfer: The Threshold Effect of per Capita Net Income. Land. 2023; 12(8):1595. https://doi.org/10.3390/land12081595
Chicago/Turabian StyleZhang, Yichi, Kai Xue, Huimin Cao, and Yingen Hu. 2023. "The Non-Linear Relationship between the Number of Permanent Residents and the Willingness of Rural Residential Land Transfer: The Threshold Effect of per Capita Net Income" Land 12, no. 8: 1595. https://doi.org/10.3390/land12081595
APA StyleZhang, Y., Xue, K., Cao, H., & Hu, Y. (2023). The Non-Linear Relationship between the Number of Permanent Residents and the Willingness of Rural Residential Land Transfer: The Threshold Effect of per Capita Net Income. Land, 12(8), 1595. https://doi.org/10.3390/land12081595