Resources or Capital?—The Quality Improvement Mechanism of Precision Poverty Alleviation by Land Elements
Abstract
:1. Introduction
2. Theoretical Framework
2.1. Land Resource and Land Capital
2.1.1. Land Resource Endowment and Land Capital Endowment
2.1.2. Mutual Feedback Effect of Land Resource and Land Capital
2.2. Effect of Land on Poverty Reduction
2.2.1. Poverty Reduction Effect of Land Resource Endowment Improvement
2.2.2. Poverty Reduction Effect of Land Capital Endowment Improvement
2.3. Circulation Effect of Land Elements and Degree of Rural Poverty
3. Research Design and Variable Selection
3.1. Measurement Model Setting
3.2. Description of Variables and Data
3.2.1. Variable Selection
- (1)
- Rural poverty (): The problem of poverty measurement is relatively complex. Since poverty measurement is not the core content to be solved in this research, this research did not attempt to perfect the measurement of poverty from the perspectives of multidimensional poverty theory, ability poverty theory, relative poverty theory, etc., but only measures the incidence of absolute poverty in rural areas on the economic scale. This study used a rural poverty incidence rate to measure rural poverty [44,45].
- (2)
- Land resource endowment (): This research selected the evaluation index of land resource endowment from the three dimensions: quantity, quality, and eco-environmental status of land.
- Considering that agriculture is the main way for rural land to participate directly in production, this research used the proportion of household cultivated land area () to measure the quantity of land.
- It is common to measure the quality of land production factors in the evaluation of farmland adaptability. Common measure indexes include meteorological, water, soil quality, and topography. However, it is difficult to obtain provincial panel data for such indicators. In this study, the ratio of land affected by natural disasters () and the effective irrigated area ratio () were used to characterize the quality of land elements [46].
- Research usually uses direct land environmental indicators or an indirect index of ecological restoration to describe land eco-environmental status. As provincial-level data acquisition for the former is difficult, this research used two indirect indexes to measure the land eco-environmental status—namely, the land consolidation area ratio () and the proportion of water loss and soil erosion control areas () [47].
- (3)
- Land capital endowment (): Based on the definition of land capital endowment in this paper, the evaluation indexes were selected from three dimensions:
- The improvement of land property rights was measured mainly by the indicators related to the number of registrations and certificates issued. For the consideration of data availability, this research used the initial number of land registration per unit area () to measure the land property rights [36].
- Given the huge difference in the average farmland area among provinces, the household cultivated land transfer ratio () was used to represent the degree of household land participation in the land transfer. The calculation method was as follows:
- (4)
- Control variables: Based on the macroscale factors affecting poverty and the characteristics of the PVAR model, road density () was selected as a control variable to represent location conditions [50].
3.2.2. Data Source and Processing
4. Empirical Research
4.1. Empirical Test
4.1.1. Unit Root Test
4.1.2. Determination of Lag Order
4.1.3. Granger Causality Test
4.2. GMM Estimation Results
4.3. Impulse Response Function
- (1)
- Land capital endowment showed a positive response to the impact of land resource endowment in the analyzed period. The response amplitude reached 0.050 and rapidly declines to 0 in the lag 1, which conforms to the transformation relationship between the two. The improvement of land resource endowment will immediately affect the capital value. The impact of land resource endowment on land capital endowment has a negative response in lag 1, with the response amplitude of −0.070. This result indicated that the process of land capitalization still has a negative impact on land resource endowment. In the process of land capitalization, the improvement of property rights, land transfer, and land finance shows limited effects on the improvement of land resource endowment; additionally, the influence on land resource endowment is more manifested as the decline of land agricultural production capacity and eco-environmental quality. This outcome indicates that the unreasonable tendency of land resource utilization to quickly obtain high value-added benefits and maximize benefits at the cost of the decline in the quality of the natural environment and the decline in factor quality has not been reversed. Land resource endowment and capital endowment in the process of poverty reduction cannot interact benignly between each other.
- (2)
- The results showed that the degree of rural poverty has a significant negative response to the impact of land resource endowment and capital endowment in lag 1, reaching −0.010 and −0.008, respectively, and rapidly attenuating to 0 in the lag 2. However, the rural poverty degree shows a negative response to the impact of capital endowment in the third lag period—though the intensity is limited—and it decreases to 0 in the fourth lag period. The results of impulse response show some differences between the poverty reduction effects of land resource and capital endowment. The poverty reduction effect of resource endowment is stronger, but the effect of capital endowment is relatively long term, which is related to the circular effect which is discussed herein.
- (3)
- When rural poverty has a positive impulse, land capital endowment has a negative response in lag 1, with a response amplitude of −0.050, which decreases to 0 in lag 2. The response of land resource endowment is not significantly different from that of 0. This finding shows that the impulse of rural poverty on land factors is mainly reflected in land capital endowment. Impulse response results show that the cyclical cumulative effects of land capital endowment and rural poverty are relatively simple, and the interaction mainly occurs in the next period. Specifically, the current land capital endowment ascension will lead to the weakening of lag 1 rural poverty; then, lag 2 land capital endowment increases again; then, lag 3 rural poverty weakens again. Thus, a virtuous circle is formed. This condition can explain the negative response of rural poverty to the impact of land capital endowment in the lag 3 period. From the perspective of response strength, the reverse effect of rural poverty on land capital endowment (−0.050) is significantly stronger than that of land capital endowment on rural poverty (−0.008), indicating that the poverty reduction effect of land capital endowment will be continuously enhanced by this circular relationship.
4.4. Variance Decomposition Analysis
4.5. Robustness Test
4.5.1. Robustness Test under Changing Variable Order
4.5.2. Robustness Test under a Different Period and Index Measurement
5. Discussion
5.1. Synergy and Opposition between Land Resource Endowments and Capital Endowments
5.2. Immediacy of Poverty Alleviation by Land Elements
5.3. Negative Feedback of Rural Poverty on Land Elements and Circular Relationship
6. Main Conclusions and Policy Recommendations
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Type | Poverty Alleviation Land Policy | Policy Content |
---|---|---|
Land resource-based policies | Priority supply of land policy | Give priority to meeting the land demand in poverty-stricken areas and set up a special land-supply plan. Guarantee the supply of land for poverty-alleviation industries. |
Unused land development policy | Based on ensuring ecological safety, evaluations of land’s potential and suitability are carried out, and poor areas are encouraged to rationally use unused land. | |
Agricultural land consolidation policy | Carry out agricultural land remediation and high-standard basic-farmland-construction projects in poverty-stricken areas; increase effective arable land area and improve arable land quality. Subsidize and encourage farmers to carry out land consolidation and basic farmland protection on their own. | |
Construction land consolidation policy | Carry out the comprehensive construction land consolidation; rectify the idleness, inefficiency, and chaotic layout of rural homesteads and operational construction land; improve rural infrastructure and public service supply. | |
Land surveyal and monitoring policy | Carry out surveyal of land consolidation potential and cultivated land reserve resources in poverty-stricken areas. Carry out agricultural land-quality-grade updates, evaluations, and dynamic monitoring, and promote the construction of basic farmland. | |
Ecological restoration policy | Carry out systematic regional ecological improvement consolidation projects. Carry out restoration and treatment projects, such as agricultural nonpoint-source pollution control and mine/geological environment restoration. Control fragile land habitats, such as those affected by salinization, rocky desertification, soil erosion, and land desertification. | |
Geological-disaster-prevention policy | Establish a geological disaster survey, evaluation, monitoring, early warning, prevention, and emergency-response system to reduce the risk of disasters causing poverty. | |
Water drilling/drought-resistance policy | Carry out hydrogeological surveys and groundwater monitoring in poor rural areas. Solve problems affecting drinking water for humans and animals in poor rural areas. | |
Poverty-alleviation relocation policy | Relocate poor people living in areas lacking living conditions to other areas and help the relocated population gradually rise out of poverty by improving the production and living conditions in the resettlement area, adjusting the economic structure, and expanding income-increasing channels. | |
Land capital-based policies | Land ownership confirmation and registration policy | Carry out national land survey and unified real estate registration. Implement the registration and issuance of rural collective land rights. Improve the registration system of rural land management rights in contracted rural lands. |
Land operation and management policy | Extend the contract period and maintain the long-term stability of land contract relationships. Allow farmers or village collectives that lack contracted land in poverty-stricken areas to obtain land assets through the redistribution of contracted land. | |
Ecological compensation policy | Provide various types of compensation to poor ecosystem service providers, including regional ecological compensation, watershed ecological compensation, element ecological compensation, and resource development and utilization compensation. | |
Land transfer policy | Encourage contracted farmers to transfer contracted land by subcontracting, leasing, swapping, transferring, and holding shares without violating the law; large-scale and specialized agricultural operations should also be encouraged to engage in these activities. Explore the establishment of a mortgage-asset-disposal mechanism. Allow rural collectives operating construction land to enter the market. | |
Policy of linked change of rural–urban construction land | Linking the increase in urban construction land with the decrease in rural construction land. Incorporate the savings indicators into trading platforms, linked to the increase and decrease in urban and rural land for transactions. | |
Cultivated land requisition–compensation balance policy | Implement the balance of land occupation and compensation for cultivated land and allow cultivated land quotas to be transferred on the market with compensation. | |
Land finance policy | Allow the proceedings of land financial activities, such as land share cooperatives, rural land banks, and land trusts. Allow mortgages for rural contracted land management rights and housing property rights. | |
Land acquisition policy | Clarify that the basic principle of compensation for land expropriation is to ensure that the original living standards of land-expropriated farmers are not lowered, and that their long-term livelihoods are guaranteed. On the basis of the original compensation for land acquisition, housing compensation and social security fees for rural villagers were added. |
Variable | Year | 2010 | 2011 | 2012 | 2013 | 2014 | 2015 | 2016 |
---|---|---|---|---|---|---|---|---|
Mean | −3.3844 | −3.3673 | −3.3883 | −3.3938 | −3.4494 | −3.5053 | −3.5488 | |
SD | 0.7860 | 0.7899 | 0.8136 | 0.8288 | 0.8538 | 0.8337 | 0.8583 | |
Mean | −2.2748 | −1.6289 | −1.8378 | −1.5210 | −1.6126 | −1.5072 | −1.4264 | |
SD | 0.9072 | 0.5777 | 0.5446 | 0.5908 | 0.5561 | 0.6070 | 0.6810 | |
Mean | −1.7132 | −2.1213 | −2.4301 | −2.2361 | −2.2550 | −2.2386 | −2.2466 | |
SD | 1.0645 | 0.8473 | 0.7277 | 0.7723 | 0.7300 | 0.7347 | 0.7033 | |
Mean | −7.2453 | −7.1954 | −7.1545 | −7.1174 | −7.0940 | −7.0641 | −7.0304 | |
SD | 2.9009 | 2.9411 | 2.9553 | 2.9635 | 2.9426 | 2.9365 | 2.9146 |
Variable | IPS | LLC | Breitung | Stationarity |
---|---|---|---|---|
−0.998 | −1.7978 ** | −3.6006 *** | stable | |
−8.638 *** | −23.8150 *** | −6.7811 *** | stable | |
−10.023 *** | −14.4492 *** | −5.9289 *** | stable | |
−5.378 *** | −19.2743 *** | −6.5848 *** | stable |
Lag | AIC | BIC | HQIC |
---|---|---|---|
1 | 1.25888 | 4.39227 * | 2.53086 |
2 | 0.562764 * | 4.75764 | 2.25191 * |
3 | 0.650014 | 6.47609 | 2.91939 |
4 | 48.8535 | 57.3402 | 51.5114 |
Equation | Excluded | Chi2 | df | Prob > Chi2 |
---|---|---|---|---|
2.7989 | 1 | 0.094 * | ||
3.1835 | 1 | 0.074 * | ||
2.3635 | 1 | 0.124 | ||
ALL | 12.026 | 3 | 0.007 *** | |
0.89042 | 1 | 0.345 | ||
14.412 | 1 | 0.000 *** | ||
25.521 | 1 | 0.000 *** | ||
ALL | 57.783 | 3 | 0.000 *** | |
3.1435 | 1 | 0.076 * | ||
12.123 | 1 | 0.000 *** | ||
3.4022 | 1 | 0.065 * | ||
ALL | 17.628 | 3 | 0.001 *** | |
0.05532 | 1 | 0.814 | ||
0.42127 | 1 | 0.516 | ||
0.99016 | 1 | 0.320 | ||
ALL | 1.0415 | 3 | 0.791 |
0.500 *** | −0.327 | −0.498 * | −0.214 | |
(−3.63) | (−0.94) | (−1.77) | (−0.24) | |
−0.033 * | −0.311 *** | 0.156 *** | 0.148 | |
(−1.67) | (−4.44) | (−3.48) | (−0.65) | |
−0.045 * | −0.380 *** | −0.549 *** | −0.162 | |
(−1.78) | (−3.80) | (−9.09) | (−1.00) | |
−0.011 | −0.090 *** | −0.023 * | −0.312 | |
(−1.54) | (−5.05) | (−1.84) | (−0.89) |
S | |||||
---|---|---|---|---|---|
1 | 1 | 0 | 0 | 0 | |
1 | 0 | 1 | 0 | 0 | |
1 | 0.014 | 0.083 | 0.903 | 0 | |
1 | 0.004 | 0.001 | 0.009 | 0.987 | |
2 | 0.97 | 0.014 | 0.008 | 0.008 | |
2 | 0.018 | 0.873 | 0.058 | 0.051 | |
2 | 0.075 | 0.063 | 0.856 | 0.007 | |
2 | 0.006 | 0.001 | 0.012 | 0.981 | |
5 | 0.969 | 0.014 | 0.009 | 0.008 | |
5 | 0.024 | 0.78 | 0.116 | 0.079 | |
5 | 0.073 | 0.071 | 0.848 | 0.008 | |
5 | 0.006 | 0.003 | 0.013 | 0.979 | |
10 | 0.969 | 0.014 | 0.009 | 0.008 | |
10 | 0.024 | 0.78 | 0.117 | 0.079 | |
10 | 0.073 | 0.072 | 0.848 | 0.008 | |
10 | 0.006 | 0.003 | 0.013 | 0.979 |
0.500 *** | −0.327 | −0.498 * | −0.214 | |
(−3.63) | (−0.94) | (−1.77) | (−0.24) | |
−0.033 * | −0.311 *** | 0.156 *** | 0.148 | |
(−1.67) | (−4.44) | (−3.48) | (−0.65) | |
−0.045 * | −0.380 *** | −0.549 *** | −0.162 | |
(−1.78) | (−3.80) | (−9.09) | (−1.00) | |
−0.011 | −0.090 *** | −0.023 * | −0.312 | |
(−1.54) | (−5.05) | (−1.84) | (−0.89) |
0.370 *** | −4.740 ** | 0.516 ** | 0.018 | |
(−5.75) | (−2.23) | (−2.44) | (−0.48) | |
0.006 *** | −0.466 *** | 0.017 ** | 0.001 | |
(−3.05) | (−4.64) | (−2.20) | (−0.80) | |
0.040 ** | −0.225 | 0.096 | −0.002 | |
(−2.52) | (−0.53) | (−1.22) | (−0.18) | |
0.101 | 0.248 | −0.276 | 0.265 *** | |
(−0.98) | (−0.08) | (−1.03) | (−4.15) | |
0.094 | 4.307 ** | 0.285 | 0.065 ** | |
(−1.49) | (−2.02) | (−1.52) | (−2.01) | |
0.005 ** | −0.377 *** | 0.018 *** | 0.001 | |
(−2.28) | (−4.43) | (−2.89) | (−1.11) | |
0.029 *** | 0.442 ** | 0.068 * | 0.005 | |
(−2.61) | (−2.14) | (−1.71) | (−0.81) | |
0.133 | 5.535 ** | 0.368 | 0.135 ** | |
(−1.2) | (−2.04) | (−1.23) | (−2.23) | |
0.178 *** | −7.027 *** | 0.677 *** | 0.013 | |
(−3.47) | (−3.18) | (−4.21) | (−0.42) | |
0.007 *** | −0.217 ** | 0.015 ** | 0.002 | |
(−3.05) | (−2.50) | (−2.53) | (−1.18) | |
0.023 ** | 0.166 | −0.011 | −0.005 | |
(−2.36) | (−0.70) | (−0.39) | (−1.28) | |
−0.094 *** | −0.622 | 0.214 *** | 0.004 | |
(−7.07) | (−1.24) | (−2.64) | (−0.30) |
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Zhang, D.; Yang, M.; Wang, Z. Resources or Capital?—The Quality Improvement Mechanism of Precision Poverty Alleviation by Land Elements. Land 2022, 11, 1874. https://doi.org/10.3390/land11101874
Zhang D, Yang M, Wang Z. Resources or Capital?—The Quality Improvement Mechanism of Precision Poverty Alleviation by Land Elements. Land. 2022; 11(10):1874. https://doi.org/10.3390/land11101874
Chicago/Turabian StyleZhang, Dongsheng, Ming Yang, and Ziyou Wang. 2022. "Resources or Capital?—The Quality Improvement Mechanism of Precision Poverty Alleviation by Land Elements" Land 11, no. 10: 1874. https://doi.org/10.3390/land11101874
APA StyleZhang, D., Yang, M., & Wang, Z. (2022). Resources or Capital?—The Quality Improvement Mechanism of Precision Poverty Alleviation by Land Elements. Land, 11(10), 1874. https://doi.org/10.3390/land11101874