Can Market-Oriented Reform of Agricultural Subsidies Promote the Growth of Agricultural Green Total Factor Productivity? Empirical Evidence from Maize in China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Policy Background
2.2. Theoretical Analysis
2.3. Research Methods
2.3.1. The Measurement Model of MGTFP
2.3.2. DID Model
2.3.3. Parallel Trend Test Model
2.3.4. Mechanism Model
2.4. Variable Description
2.4.1. Dependent Variable
2.4.2. Core Independent Variable
2.4.3. Control Variables
2.5. Data Sources and Descriptive Statistics
3. Results
3.1. Evolution of MGTFP in China
3.2. DID Regression Results
3.3. Dynamic Effects of MPSR
3.4. Analysis of Impact Mechanisms
3.5. Disruption Policy: Soybean Target Price Reform
3.6. Parallel Trend Test
3.7. Placebo Test
3.7.1. Time-Placebo Test
3.7.2. Regional Placebo Test
3.8. Discussion
4. Conclusions and Recommendations
4.1. Conclusions
- (1)
- China’s MGTFP increased in 2010–2020, with an average annual growth rate of 0.70%. From 2010 to 2016, the average growth rate of MGTFP in China was −0.30%. From 2017 to 2020, the average annual growth of MGTFP was 2.50%, and the growth of MGTFP after 2016 was more obvious.
- (2)
- The MPSR could raise MGTFP above the average level. However, the effect of the policy is lagging behind. Two years after the reform, the effect of the policy was evident. Furthermore, this study discovered that urbanization and corn planting areas improved MGTFP and that economic level development and disaster rates reduced MGTFP.
- (3)
- A mechanism analysis of how the MPSR made the MGTFP grow shows that it mostly did so by helping green technology in maize advance, and the effect on green efficiency was not statistically significant.
4.2. Recommendations
- (1)
- The slow development of MGTFP in China is mainly due to the mode of production. China’s agricultural development cannot rely on high inputs of pesticides and fertilizers. Agricultural production should be transformed into scientific and technological innovation. In order to promote the development of MGTFP, the government should strengthen the research and development of green and low-carbon technologies for agriculture. The government should continue to reduce the use of pesticides and fertilizers and promote the green development of farmers. Last, the government should change agricultural production modes and take appropriate scale management measures to raise the agricultural MGTFP level.
- (2)
- China should persist in the market-oriented reform of agricultural subsidies for rice and wheat. Our research shows that the MPSR will promote MGTFP, which indicates that the market-oriented reform of agricultural subsidies can promote green agricultural development. The future reform of agricultural subsidies should revolve around market-oriented reform. The market’s functions of resource allocation and price formation will be activated. At present, the price of wheat and rice in China is still decided by the government. The government should gradually carry out the market-oriented reform of agricultural subsidies and restore the market mechanism for determining prices. Producers’ subsidies, cost savings, and efficiency gains will help farmers produce food.
- (3)
- The government should make maize producers’ subsidies more reasonable. The reason the impact of MPSR on MGTFP is lagging is that the subsidy is not reasonable enough. Farmers’ planting behavior determines MGTFP. The amount and mode of subsidy have a profound influence on farmers’ planting behavior. China just started implementing MPSR a few years ago, and the policy should be further improved. The continuity of subsidy policy, the determination principle of subsidy standards, the publication time of subsidy standards, and the diversification of subsidy modes need further improvement.
4.3. Limitations of the Study and Future Research
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Carbon Emissions Source | Carbon Emissions Coefficient | Source of Coefficient |
---|---|---|
Chemical fertilizer | 0.8956 kg·kg−1 | Oak Ridge National Laboratory, ORNL |
Pesticides | 4.9341 kg·kg−1 | Oak Ridge National Laboratory, ORNL |
Agricultural film | 5.18 kg·kg−1 | Institute of Resources, Ecosystem and Environment of Agriculture, IREEA |
Diesel oil | 0.5927 kg·kg−1 | IPCC |
Plowing | 312.6 kg·km−2 | Institute of Agriculture and Biotechnology of China Agricultural University, IABCAU |
Irrigation | 25 kg·Cha−1 | Li et al., 2011 [54] |
Variables | Abbreviation | Units | N | Mean | S.D. | Min | Max |
---|---|---|---|---|---|---|---|
Green total factor productivity of maize | MGTFP | - | 220 | 1.007 | 0.139 | 0.405 | 2.427 |
Green technology change of maize | GTC | - | 220 | 1.014 | 0.027 | 1.000 | 1.168 |
Green technology efficiency of maize | GTE | - | 220 | 0.994 | 0.136 | 0.402 | 2.427 |
DID variable | did | - | 220 | 0.073 | 0.260 | 0.000 | 1.000 |
Urbanization | URB | % | 220 | 0.536 | 0.085 | 0.338 | 0.734 |
Regional human capital | HC | Year | 220 | 9.705 | 0.724 | 7.516 | 11.000 |
Infrastructure construction | INF | Km | 220 | 0.868 | 0.509 | 0.092 | 2.197 |
Corn planting area | CPA | Mu | 220 | 1.579 | 1.590 | 0.195 | 6.318 |
Eco-development level | IRR | K yuan | 220 | 10.386 | 3.853 | 3.425 | 24.199 |
Financial support for agriculture | FSA | B yuan | 220 | 57.952 | 26.747 | 9.423 | 133.936 |
Disaster rate | DR | % | 220 | 0.164 | 0.106 | 0.012 | 0.512 |
Maize planting structure | MPS | % | 220 | 0.272 | 0.167 | 0.053 | 0.700 |
Maize yield | OUTPUT1 | Kg | 220 | 480.013 | 90.432 | 229.880 | 748.590 |
Carbon emissions | OUTPUT2 | Kg | 220 | 491.600 | 129.400 | 191.100 | 734.500 |
Mechanical input | INPUT1 | Yuan | 220 | 7264.000 | 1456.000 | 3448.000 | 12,071.000 |
Fertilizer input | INPUT2 | Yuan | 220 | 111.500 | 52.200 | 29.300 | 243.400 |
Seed input | INPUT3 | Yuan | 220 | 1243.000 | 646.100 | 25.100 | 2431.000 |
Pesticide input | INPUT4 | Yuan | 220 | 2019.000 | 300.100 | 1298.000 | 2719.000 |
Labor input | INPUT5 | Day | 220 | 766.800 | 169.000 | 458.100 | 1314.000 |
Other inputs | INPUT6 | Yuan | 220 | 223.400 | 81.500 | 36.500 | 505.900 |
Region | 2010–2016 | 2017–2020 | Mean | |
---|---|---|---|---|
Experience group | Inner Mongolia | 0.988 | 1.090 | 1.029 |
Liaoning | 1.019 | 1.004 | 1.013 | |
Jilin | 1.036 | 1.104 | 1.063 | |
Heilongjiang | 0.985 | 1.048 | 1.010 | |
Control group | Hebei | 0.979 | 1.019 | 0.995 |
Shanxi | 0.975 | 1.012 | 0.990 | |
Jiangsu | 0.988 | 0.991 | 0.989 | |
Anhui | 0.962 | 1.024 | 0.987 | |
Shandong | 0.995 | 1.036 | 1.011 | |
Henan | 1.207 | 0.866 | 1.071 | |
Hubei | 0.960 | 1.004 | 0.977 | |
Guangxi | 0.987 | 0.976 | 0.983 | |
Chongqing | 0.941 | 1.008 | 0.968 | |
Sichuan | 1.008 | 1.002 | 1.006 | |
Guizhou | 1.008 | 1.026 | 1.015 | |
Yunnan | 0.988 | 1.018 | 1.000 | |
Shaanxi | 0.988 | 1.015 | 0.999 | |
Gansu | 0.952 | 1.065 | 0.997 | |
Ningxia | 0.993 | 1.046 | 1.014 | |
Xinjiang | 0.971 | 1.143 | 1.040 | |
Mean | 0.997 | 1.025 | 1.007 | |
Kruskal–Wallis t test | 1.878 |
Variables | Model 1 | Model 2 | Model 3 |
---|---|---|---|
did | 0.164 *** (0.039) | 0.145 *** (0.050) | 0.119 *** (0.053) |
URB | -- | 1.335 *** (0.333) | 1.433 *** (0.412) |
HC | -- | 0.005 (0.043) | −0.029 (0.044) |
INF | -- | −0.048 (0.117) | −0.026 (0.117) |
CPA | -- | 0.136 *** (0.037) | 0.147 *** (0.041) |
IRR | -- | -- | −0.706 ** (0.290) |
FSA | -- | -- | 0.005 (0.093) |
DR | -- | -- | −0.328 *** (0.112) |
CPS | -- | -- | −0.235 (0.429) |
Individual fixed effects | Yes | Yes | Yes |
Year fixed effects | Yes | Yes | Yes |
_cons | 4.605 *** (0.025) | −0.677 (1.425) | 5.376 *** (2.512) |
R2 | 0.025 | 0.118 | 0.159 |
N | 220 | 220 | 220 |
Variables | Model 1 | Model 2 |
---|---|---|
Year × 2017 | 0.093 (0.061) | 0.101 (0.062) |
Year × 2018 | 0.051 (0.061) | 0.060 (0.065) |
Year × 2019 | 0.189 *** (0.061) | 0.119 * (0.067) |
Year × 2020 | 0.194 *** (0.061) | 1.358 *** (0.332) |
Control variables | No | Yes |
Individual fixed effects | Yes | Yes |
Year fixed effects | No | Yes |
_cons | 4.543 *** (0.008) | 3.715 *** (0.737) |
R2 | 0.167 | 0.146 |
N | 220 | 220 |
Variables | Model 1 | Model 2 |
---|---|---|
did | 0.043 *** (0.016) | −0.054 (0.072) |
Control variables | Yes | Yes |
Individual fixed effects | Yes | Yes |
Year fixed effects | Yes | Yes |
_cons | 3.621 *** (0.762) | 8.121 (3.414) |
R2 | 0.594 | 0.118 |
N | 220 | 220 |
Variables | Model 1 | Model 2 |
---|---|---|
did | 0.167 *** (0.054) | 0.143 ** (0.055) |
Soybean target price reform | Yes | Yes |
Control variables | No | Yes |
Individual fixed effects | Yes | Yes |
Year fixed effects | Yes | Yes |
_cons | 4.605 *** (0.025) | 6.635 *** (2.618) |
R2 | 0.020 | 0.166 |
N | 220 | 220 |
Variables | Model 1 | Model 2 |
---|---|---|
Year × 2011 | −0.120 (0.085) | −0.009 (0.154) |
Year × 2012 | −0.014 (0.070) | 0.112 (0.122) |
Year × 2013 | 0.036 (0.083) | 0.183 (0.108) |
Year × 2014 | 0.015 (0.075) | 0.133 (0.087) |
Year × 2015 | 0.060 (0.074) | 0.137 (0.086) |
Year × 2016 | −0.017 (0.063) | 0.060 (0.079) |
Control variables | Yes | Yes |
Individual fixed effects | Yes | Yes |
Year fixed effects | Yes | Yes |
_cons | 4.639 *** (0.031) | 6.340 (2.400) |
R2 | 0.112 | 0.250 |
N | 220 | 220 |
Variables | Model 1 | Model 2 |
---|---|---|
did | −0.017 (0.062) | −0.060 (0.064) |
Control variables | Yes | Yes |
Individual fixed effects | Yes | Yes |
Year fixed effects | Yes | Yes |
_cons | 7.434 *** (2.454) | 8.229 *** (2.585) |
R2 | 0.136 | 0.140 |
N | 220 | 220 |
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© 2023 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
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Ye, F.; Yang, Z.; Yu, M.; Watson, S.; Lovell, A. Can Market-Oriented Reform of Agricultural Subsidies Promote the Growth of Agricultural Green Total Factor Productivity? Empirical Evidence from Maize in China. Agriculture 2023, 13, 251. https://doi.org/10.3390/agriculture13020251
Ye F, Yang Z, Yu M, Watson S, Lovell A. Can Market-Oriented Reform of Agricultural Subsidies Promote the Growth of Agricultural Green Total Factor Productivity? Empirical Evidence from Maize in China. Agriculture. 2023; 13(2):251. https://doi.org/10.3390/agriculture13020251
Chicago/Turabian StyleYe, Feng, Zhongna Yang, Mark Yu, Susan Watson, and Ashley Lovell. 2023. "Can Market-Oriented Reform of Agricultural Subsidies Promote the Growth of Agricultural Green Total Factor Productivity? Empirical Evidence from Maize in China" Agriculture 13, no. 2: 251. https://doi.org/10.3390/agriculture13020251