How Farmers Make Investment Decisions: Evidence from a Farmer Survey in China
Abstract
:1. Introduction
2. Methodology
2.1. Analysis Framework
- (1)
- Had the willingness and have increased their investment;
- (2)
- Had the willingness and have decreased their investment;
- (3)
- Had the willingness but have not adjusted their investment; and
- (4)
- Did not have the willingness and have not adjusted their investment.
2.2. Model Selection
2.2.1. Multinomial Logistic Model
2.2.2. Adaptive Expectations Model
2.2.3. Output Elasticity of Capital and Labor
3. Farmers’ Willingness to Invest in Grain Production
3.1. Data, Variables and Descriptive Statistics
3.2. Regression Results and Discussion of the Multinomial Logit Model
3.2.1. Factors Affecting Capital Input
3.2.2. Factors Affecting Labor Input and Attitudes
3.2.3. Factors Affecting Characteristics of Farm Households
4. Differences between Farmers’ Willingness and Behavior
4.1. Analysis Based on the Perspective of Adjustment Capability
4.1.1. Description of Differences
4.1.2. Reasons for the Differences
4.2. Analysis Based on the Perspective of Substitution Effect
4.2.1. Substitution Effect between Labor and Capital Input
4.2.2. Changing Trends in Labor and Return on Capital
4.2.3. Reasons for the Differences between Farmers’ Willingness and the Actual Behavior
5. Conclusions and Implications
Author Contributions
Funding
Conflicts of Interest
Appendix A. Farmers’ Food Production Behavior Questionnaire
Appendix A.1. Characteristics of Farm Households
Appendix A.2. Utilization of Cultivated Land
Appendix A.3. Grain Growing Behavior of Farmers
Rice | Wheat | Corn | Beans | Potatoes | Cash Crops | |
Area (mu) | ||||||
Average yield per mu (Jin) | ||||||
Average output value per mu (RMB) | ||||||
Average cost per mu (RMB) | ||||||
Labor costs (RMB) | ||||||
Cost of means of production (RMB) |
Appendix A.4. Farmers’ Grain Planting Technology
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Variables | Variable Description | Mean | Std. Dev. | Skewness | Kurtosis |
---|---|---|---|---|---|
Explained variable | |||||
Willingness to invest in grain production (gvest) | Expected increase in investment = 1; expected decrease in investment = 2; remain constant = 0 | 0.787 | 0.656 | 0.249 | 2.267 |
Explanatory variables | |||||
1. Capital input | |||||
Seed costs (seed) | Seed costs per mu (RMB) | 108.611 | 125.821 | 0.382 | 7.981 |
Fertilizer costs (ferti) | Fertilizer costs per mu (RMB) | 140.333 | 127.189 | 0.538 | 6.532 |
Pesticide costs (pestc) | Pesticide costs mu (RMB) | 109.501 | 126.412 | 2.224 | 6.938 |
Irrigation costs (irrga) | Irrigation costs per mu (RMB) | 91.764 | 122.258 | 0.763 | 5.841 |
Machinery costs (mech) | Machinery costs per mu (RMB) | 126.16 | 197.748 | 3.179 | 17.629 |
2. Labor input & attitudes | |||||
Number of farmers (farm) | Number of farmers per household | 1.617 | 1.256 | 2.989 | 10.217 |
Days of seasonal workers hired (emplo) | Days of seasonal workers hired during busy seasons (day) | 2.136 | 1.021 | 2.340 | 13.673 |
Attitudes towards scale of land (satti) | Keep the scale unchanged = 1; expand = 2; reduce = 3 | 1.639 | 0.6333 | 0.465 | 2.331 |
Attitudes towards land transfer (tatti) | Increased willingness to transfer land = 1; otherwise = 2 | 1.589 | 0.644 | 0.626 | 2.406 |
Attitudes towards using fertilizers (fatti) | Listen to agricultural technicians = 1; decide by themselves = 2; listen to friends = 3; listen to sellers = 4 | 2.037 | 1.032 | 0.644 | 2.249 |
Control variables Characteristics of farmers | |||||
Scale of agricultural land (scale) | Sown area of crops (mu) | 5.776 | 7.444 | 4.477 | 29.211 |
Sown area (area) | Sown area of grain (mu) | 5.039 | 6.125 | 4.646 | 30.823 |
Change in sown area (achan) | Increase =1; unchanged = 2, decrease = 3 | 2.251 | 0.598 | −0.148 | 2.481 |
Proportion of agricultural income (arati) | Agricultural income as a proportion of household income | 49.773 | 33.056 | −0.125 | 1.593 |
Proportion of grain production income (grati) | Grain production income as a proportion of agricultural income | 56.623 | 35.257 | −0.287 | 1.601 |
Level of education (educ) | Unschooled = 1; primary school = 2; middle school = 3; high school = 4; college or above = 5 | 3.208 | 1.131 | 0.140 | 2.501 |
Distance from farmland to home (dist) | Distance from farmland to farmers’ home (km) | 2.864 | 1.563 | 1.721 | 9.494 |
Influencing Factors | Increase in Investment | Decrease in Investment | ||||
---|---|---|---|---|---|---|
β | S.E. | exp(β) | β | S.E. | exp(β) | |
Capital input | ||||||
seed | −0.0198 | 0.0203 | 0.9981 | 0.0767 | 0.0204 | 1.0076 |
ferti | 0.0146 | 0.0114 | 1.014 | −0.0173 | 0.0112 | 1.0172 |
pestc | 0.0149 * | 0.0188 | 1.015 | 0.0812 | 0.0185 | 1.0081 |
irrga | 0.071 * | 0.0066 | 1.0513 | −0.2348 | 0.0067 | 0.8792 |
mech | 0.0353 ** | 0.0186 | 1.0360 | 0.0403 | 0.1792 | 1.0411 |
Labor input & attitudes | ||||||
farm | −1.7464 *** | 0.6286 | 0.1744 | 1.5839 ** | 3.6044 | 4.8980 |
emplo | 0.5801 | 0.4037 | 1.7861 | 0.5972 | 0.2941 | 1.8171 |
satti | −0.3355 | 0.6911 | 0.7151 | −0.7767 | 1.4093 | 0.9252 |
tatti | −0.4218 * | 0.2118 | 0.6558 | −2.3008 * | 0.3187 | 9.9825 |
fatti | 0.9463 * | 0.3619 | 2.5762 | 1.2333 | 0.5762 | 3.432 |
Characteristics of farm households | ||||||
scale | 0.1232 | 0.0136 | 0.9946 | −0.1287 | 0.5164 | 0.8792 |
area | 0.1493 ** | 0.0263 | 0.8613 | −0.0548 | 0.6671 | 0.9466 |
achan | 0.5779 | 1.0263 | 0.5783 | 0.3028 | 0.5761 | 1.3536 |
arati | 0.0173 * | 0.0184 | 1.0176 | −0.0112 * | 0.0182 | 0.9889 |
grati | 0.0545 ** | 0.0287 | 1.0560 | 0.0586 | 0.0272 | 1.0603 |
educ | 0.1761 * | 0.2055 | 1.1932 | −0.6358 | 0.7204 | 0.5295 |
dist | 0.2873 | 0.0437 | 1.3328 | −0.2897 ** | 0.2085 | 0.7485 |
Category | National Average Labor Input | Labor Input in Beijing | Labor Input in Tianjin | Labor Input in Hebei |
---|---|---|---|---|
Machinery input | −0.940 ** | −0.467 * | −0.478 * | −0.953 ** |
Fertilizer input | −0.962 ** | −0.120 | −0.752 | −0.952 ** |
1978–1990 | 1991–2006 | 2007–2017 | |
---|---|---|---|
Japonica rice | |||
Output elasticity of labor | 0.013 | 0.119 | 0.187 |
Marginal productivity of Labor (kg) | 0.219 | 4.306 | 13.658 |
Output elasticity of capital | 0.987 | 0.881 | 0.813 |
Marginal productivity of capital (kg) | 8.422 | 6.732 | 6.021 |
Wheat | |||
Output elasticity of labor | 0.024 | 0.069 | 0.232 |
Marginal productivity of Labor (kg) | 0.361 | 2.322 | 23.413 |
Output elasticity of capital | 0.976 | 0.931 | 0.768 |
Marginal productivity of capital (kg) | 6.126 | 5.624 | 4.727 |
Output elasticity of labor | 0.139 | 0.191 | 0.326 |
Corn | |||
Marginal productivity of Labor (kg) | 2.378 | 6.005 | 20.313 |
Output elasticity of capital | 0.861 | 0.809 | 0.674 |
Marginal productivity of capital (kg) | 9.351 | 8.273 | 6.356 |
Beijing | Tianjin | Hebei | Average in China | |
---|---|---|---|---|
Japonica rice | -- | 0.527 | 0.429 | 0.488 |
Wheat | 0.483 | 0.556 | 0.478 | 0.469 |
Corn | 0.636 | 0.635 | 0.547 | 0.513 |
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Wang, S.; Tian, Y.; Liu, X.; Foley, M. How Farmers Make Investment Decisions: Evidence from a Farmer Survey in China. Sustainability 2020, 12, 247. https://doi.org/10.3390/su12010247
Wang S, Tian Y, Liu X, Foley M. How Farmers Make Investment Decisions: Evidence from a Farmer Survey in China. Sustainability. 2020; 12(1):247. https://doi.org/10.3390/su12010247
Chicago/Turabian StyleWang, Shuangjin, Yuan Tian, Xiaowei Liu, and Maggie Foley. 2020. "How Farmers Make Investment Decisions: Evidence from a Farmer Survey in China" Sustainability 12, no. 1: 247. https://doi.org/10.3390/su12010247
APA StyleWang, S., Tian, Y., Liu, X., & Foley, M. (2020). How Farmers Make Investment Decisions: Evidence from a Farmer Survey in China. Sustainability, 12(1), 247. https://doi.org/10.3390/su12010247