How Neighbors Influence Rice–Crayfish Integrated System Adoption: Evidence from 980 Farmers in the Lower and Middle Reaches of the Yangtze River
Abstract
:1. Introduction
2. Literature Review
3. Data and Methods
3.1. Data
3.2. Methodology and Variables
4. Empirical Results and Discussion
4.1. Baseline Results of the Neighborhood Effect on Farmers’ Adoption Behavior
4.2. Robustness Checks
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Variable Category | Variables | Variables Description | Mean | SD |
---|---|---|---|---|
Dependent variable | Farmers’ adoption behavior | Whether your family adopted rice–crayfish integrated systems in 2018? Dummy (1 = yes; 0 = no) | 0.710 | 0.454 |
Explanatory variable | Neighborhood effect | Average adoption behavior in neighbors’ household. (range: 0–1) | 0.292 | 0.289 |
Instrumental variables | Village diversity in surnames | Whether your village is a miscellaneous surname village? (1 = yes; 0 = no) | 0.699 | 0.459 |
Proportion of paddy field area | The proportion of paddy field area to cultivated land in the village. (range: 0–1) | 0.848 | 0.141 | |
Household characteristics | Age | Household head age. Number | 54.791 | 9.261 |
Education | Education of the household head. Number | 7.276 | 3.204 | |
Risk preference 1 | What’s your risk preference? (3 = high risk preference; 2 = neutral risk preference; 1 = low risk preference) | 1.63 | 0.765 | |
Job status | Whether you engaged in part-time job? (1 = yes; 0 = no) | 0.33 | 0.47 | |
Perception on economic benefits | Whether you think rice–crayfish integrated systems are highly profitable? (1 = yes; 0 = no) | 0.805 | 0.491 | |
Perception on population | Rice–crayfish integrated systems are popular in your village? (5 = strongly agree; 4 = agree; 3 = not sure; 2 = disagree; 1 = strongly disagree) | 3.609 | 0.897 | |
Information access | You can easily get information on rice–crayfish integrated system. (5 = strongly agree; 4 = agree; 3 = not sure; 2 = disagree; 1 = strongly disagree) | 3.348 | 1.06 | |
Agricultural extension training attendance | You have attended agricultural extension training many times in 2018? (5 = frequently; 4 = often; 3 = some time; 2 = rarely; 1 = none) | 3.417 | 1.045 | |
Scale of operations | How many farmlands you have operated in 2019. (mu) | 91.655 | 202.729 | |
Agricultural labors | How many agricultural labors in your family? Number | 2.028 | 0.68 | |
Own capital investment proportion | What’s the proportion of own possessed capital investment to the whole agricultural investment? (%) | 90.099 | 20.949 | |
Cooperation membership status | Is your family any member of the village cooperation? (1 = yes; 0 = no) | 0.191 | 0.393 | |
Proportion of agricultural income | What’s the proportion of agricultural income to total household income? (%) | 0.693 | 0.272 | |
Plots distance | How far away is your furthest two plots? (kilometers) | 0.653 | 1.895 | |
Neighborhood characteristics | g_age | The average age of household heads within neighboring group. Number | 54.791 | 4.421 |
g_education | The average education of household heads within neighboring group. Number | 7.276 | 1.48 | |
g_job status | The average part-time job of household heads within neighboring group. Number | 0.33 | 0.167 | |
g_corperation membership status | The average member of corporation of household heads within neighboring group. Number | 0.191 | 0.189 | |
Village characteristics | Agents | How many agents who buy rice and crayfish within the village? Number | 7.297 | 8.038 |
Effective irrigated area | What’s the proportion of effective irrigated area in villages? (%) | 94.548 | 11.708 | |
Mechanical plough road | What’s the effective traffic rate of the village mechanical plough road? (%) | 90.536 | 17.835 | |
Region variables | Anhui | Household from Anhui province. (1 = yes; 0 = no) | 0.33 | 0.47 |
Hunan | Household from Hunan province. (1 = yes; 0 = no) | 0.335 | 0.472 | |
Hubei | Household from Hubei province. (1 = yes; 0 = no) | 0.334 | 0.472 |
Panel A | ||||||
---|---|---|---|---|---|---|
Variables | Model 1: Probit | Model 2: FE | Model 3: IV Probit | |||
Coef. | P | Coef. | P | Coef. | P | |
Neighborhood adoption behavior (NE) | 0.426 *** | (0.034) | 0.379 *** | (0.042) | 0.367 *** | (0.124) |
Age | −0.003 *** | (0.001) | −0.003 *** | (0.001) | −0.003 ** | (0.001) |
Educ | −0.005 * | (0.003) | −0.005 * | (0.003) | −0.005 * | (0.003) |
Risk preference | 0.020 | (0.013) | 0.020 | (0.013) | 0.020 | (0.013) |
Job status | −0.050 *** | (0.019) | −0.049 *** | (0.019) | −0.050 ** | (0.020) |
Perception on economic benefits | 0.043 ** | (0.019) | 0.039 ** | (0.019) | 0.037 * | (0.020) |
Perception on population | 0.030 *** | (0.010) | 0.027 *** | (0.010) | 0.027 ** | (0.012) |
Information access | 0.075 *** | (0.011) | 0.077 *** | (0.011) | 0.077 *** | (0.015) |
Extension training attendance | −0.011 | (0.009) | −0.012 | (0.009) | −0.012 | (0.010) |
Scale of operations | −0.000 | (0.000) | −0.000 | (0.000) | −0.000 | (0.000) |
Agricultural labors | −0.009 | (0.013) | −0.010 | (0.013) | −0.010 | (0.014) |
Investment proportion | −0.002 *** | (0.001) | −0.002 *** | (0.001) | −0.002 ** | (0.001) |
Cooperation membership status | 0.076 *** | (0.029) | 0.072 ** | (0.029) | 0.072 *** | (0.027) |
Proportion of agricultural income | −0.084 ** | (0.037) | −0.089 ** | (0.037) | −0.089 ** | (0.042) |
Plots distance | −0.008 ** | (0.003) | −0.007 ** | (0.003) | −0.008 | (0.005) |
g_age | 0.003 | (0.003) | 0.001 | (0.003) | 0.001 | (0.006) |
g_educ | 0.005 | (0.008) | 0.003 | (0.009) | 0.003 | (0.009) |
g_Job status | 0.063 | (0.053) | 0.051 | (0.053) | 0.047 | (0.062) |
g_ corperation Membership status | −0.103 * | (0.053) | −0.097 * | (0.053) | −0.096 | (0.065) |
Agents | 0.004 ** | (0.001) | 0.004 *** | (0.002) | 0.004 | (0.003) |
Effective_irrigated_area | −0.000 | (0.001) | −0.000 | (0.001) | 0.000 | (0.001) |
Mechanical_plough_road | 0.001 | (0.001) | 0.001 | (0.001) | 0.001 | (0.001) |
Hubei | 0.056 ** | (0.027) | 0.052 | (0.044) | ||
Anhui | 0.002 | (0.026) | −0.006 | (0.027) | ||
Panel B: First-stage estimation results | ||||||
Village diversity in surnames | −0.011 *** | (0.001) | ||||
Proportion of paddy field area | 0.027 *** | (0.004) | ||||
First-stage F value—Weak identification test | 61.23 | |||||
DWH p-Value—Endogeneity test | 0.090 | |||||
Amemiya-Lee-Newey minimum chi-sq statistic p-Value—Over-identification test | 0.632 |
Robustness Checks 1 | Robustness Checks 2 | Robustness Checks 4 | Robustness Checks 5 | |
---|---|---|---|---|
coef. (p-Value) | coef. (p-Value) | coef. (p-Value) | coef. (p-Value) | |
Neighborhood effect | 0.383 *** (0.122) | 0.413 *** (0.128) | 0.803 *** (0.148) | 0.372 *** (0.100) |
Instrumental variables | YES | YES | YES | YES |
Household characteristics | Controlled | Controlled | Controlled | Controlled |
Neighborhood characteristics | Controlled | Controlled | Controlled | Controlled |
Village characteristics | Controlled | Controlled | Controlled | Controlled |
Provincial dummies | Controlled | Controlled | Controlled | Controlled |
Observations | 930 | 727 | 980 | 980 |
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Liu, K.; Qi, Z.; Tan, L.; Hu, C. How Neighbors Influence Rice–Crayfish Integrated System Adoption: Evidence from 980 Farmers in the Lower and Middle Reaches of the Yangtze River. Int. J. Environ. Res. Public Health 2023, 20, 4399. https://doi.org/10.3390/ijerph20054399
Liu K, Qi Z, Tan L, Hu C. How Neighbors Influence Rice–Crayfish Integrated System Adoption: Evidence from 980 Farmers in the Lower and Middle Reaches of the Yangtze River. International Journal of Environmental Research and Public Health. 2023; 20(5):4399. https://doi.org/10.3390/ijerph20054399
Chicago/Turabian StyleLiu, Ke, Zhenhong Qi, Li Tan, and Canwei Hu. 2023. "How Neighbors Influence Rice–Crayfish Integrated System Adoption: Evidence from 980 Farmers in the Lower and Middle Reaches of the Yangtze River" International Journal of Environmental Research and Public Health 20, no. 5: 4399. https://doi.org/10.3390/ijerph20054399