Differences and Factors of Raw Milk Productivity between China and the United States
Abstract
:1. Introduction
2. Literature Review
3. Materials and Methods
3.1. Stochastic Frontier Production Function
3.2. Data Source
4. Results
5. Discussion
Similarities and Differcences within the Existing Research
6. Conclusions and Recommendation
6.1. Conclusions
6.2. Policy Recommendation
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variable | Coefficient | S. E | T-Value | |
---|---|---|---|---|
China raw milk production | Constant term | 4.9396 *** | 0.2371 | 20.8318 |
Feed expense | 0.4843 *** | 0.0268 | 18.0884 | |
Health and epidemic prevention expense | 0.0632 *** | 0.0174 | 3.6361 | |
Fuel and impetus expense | 0.0869 *** | 0.0150 | 5.7811 | |
Maintenance expense | 0.0215 ** | 0.0100 | −2.1476 | |
0.0205 *** | 0.0020 | 10.3941 | ||
0.1214 *** | 0.0432 | 2.8095 | ||
U.S. raw milk production | Constant term | 2.3596 *** | 0.1413 | 16.7012 |
Feed expense | 0.2895 *** | 0.0507 | 5.7159 | |
Health and epidemic prevention expense | 0.0094 | 0.0521 | 0.1799 | |
Fuel and impetus expense | 0.1924 *** | 0.0529 | 3.6336 | |
Maintenance expense | −0.0467 | 0.0626 | −0.7463 | |
0.0170 *** | 0.0020 | 8.5881 | ||
0.0109 *** | 0.0041 | 2.6769 |
Variable | Elasticity Coefficient | Average Annual Growth Rate | Contribution Growth Rate | Contribution Share | |
---|---|---|---|---|---|
China | Feed expense | 0.4843 | 10.7993% | 5.2305% | 52.5255% |
Health and epidemic prevention expenses | 0.0632 | 6.5809% | 0.4159% | 4.1764% | |
Fuel and impetus expenses | 0.0869 | 7.3197% | 0.6364% | 6.3912% | |
Maintenance expense | −0.0215 | 6.0326% | −0.1299% | 1.3045% | |
Raw milk production value | / | 9.9580% | / | / | |
Technological progress rate | / | / | 3.4769% | 34.9159% | |
U.S. | Feed cost | 0.2895 | 5.1597% | 1.4939% | 25.7375% |
Health and epidemic prevention expenses | 0.0094 | 1.9842% | 0.0186% | 0.3201% | |
Fuel and impetus expenses | 0.1924 | 6.2658% | 1.2054% | 20.7676% | |
Maintenance expense | −0.0467 | 3.7817% | −0.1767% | 3.0446% | |
Raw milk production value | / | 5.8043% | / | / | |
Technological progress rate | / | / | 3.1212% | 53.7732% |
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Bai, Y.; Han, K.; Xiong, L.; Li, Y.; Liao, R.; Wang, F. Differences and Factors of Raw Milk Productivity between China and the United States. Agriculture 2022, 12, 1899. https://doi.org/10.3390/agriculture12111899
Bai Y, Han K, Xiong L, Li Y, Liao R, Wang F. Differences and Factors of Raw Milk Productivity between China and the United States. Agriculture. 2022; 12(11):1899. https://doi.org/10.3390/agriculture12111899
Chicago/Turabian StyleBai, Yuhang, Kuixing Han, Lichun Xiong, Yifei Li, Rundong Liao, and Fengting Wang. 2022. "Differences and Factors of Raw Milk Productivity between China and the United States" Agriculture 12, no. 11: 1899. https://doi.org/10.3390/agriculture12111899
APA StyleBai, Y., Han, K., Xiong, L., Li, Y., Liao, R., & Wang, F. (2022). Differences and Factors of Raw Milk Productivity between China and the United States. Agriculture, 12(11), 1899. https://doi.org/10.3390/agriculture12111899