The Impact of Social Capital on Farmers’ Willingness to Adopt New Agricultural Technologies: Empirical Evidence from China
Abstract
:1. Introduction
2. Theoretical Analysis and Hypotheses
2.1. The Impact of Social Networks on Farmers’ Willingness to Adopt New Agricultural Technologies
2.2. The Impact of Social Participation on Farmers’ Willingness to Adopt New Agricultural Technologies
2.3. The Influence of Social Trust on Farmers’ Willingness to Adopt New Agricultural Technologies
2.4. Regional Heterogeneity of the Influence of Social Capital on Farmers’ Willingness to Adopt New Agricultural Technologies
2.5. The Moderating Effect of Demographic Change
3. Data and Methodology
3.1. Data Sources
3.2. Model
3.3. Variable Selection and Descriptive Statistics
- 2.
- Independent variable: When referring to relevant theories in this field, we found that some scholars often use a single indicator as a proxy variable of social capital when selecting independent variables. For example, using the “number of gifts given by families” as a proxy variable of social capital [63] may not cover all of the characteristic angles of social capital. In recent years, with the deepening of relevant theoretical research, some scholars have pointed out that through the factor analysis method, the social capital is measured, and then multidimensional indicators are used to construct a comprehensive index, which can cover more social capital information and facilitate a more detailed examination of social capital characteristics. As described by Putnam et al. [64] and Miao [43], we divided social capital into three characteristic perspectives: social networks, social trust, and social participation. Doing so can not only effectively help researchers to process the data and mitigate possible collinearity issues, but also provide insight into the inherent link between farmers’ social networks and technology adoption.
- 3.
- Moderator: We selected the number of instances of hukou migration as a proxy variable to examine whether demographic change has a moderating effect on the relationship between social capital and farmers’ decision-making behavior [35]. Based on the heterogeneity of regional culture and economic development, the floating population is affected by the surrounding environment and reintegrated into the new innovative technology consumption system. This may cause apparent differences in the willingness of farmers to adopt the technology.
- 4.
- Control variables: We selected some possible influencing factors as control variables. One type consisted of the individual characteristics of the household head, including gender, political status, and income. The other type was family characteristics, i.e., family income. The definitions of variables and descriptive statistical analysis are shown in Table 1.
4. Estimated Results and Discussion
4.1. Social Capital and Farmers’ Adoption of New Agricultural Technologies
4.1.1. The Influence of Social Capital on Farmers’ Willingness to Adopt New Agricultural Technologies
4.1.2. The Influence of Social Networks on Farmers’ Willingness to Adopt New Agricultural Technologies
4.1.3. The impact of Social Participation on Farmers’ Willingness to Adopt New Agricultural Technologies
4.1.4. The Influence of Social Trust on Farmers’ Willingness to Adopt New Agricultural Technologies
4.2. Heterogeneity of the Influence of Social Capital on Farmers’ Willingness to Adopt New Agricultural Technologies
4.3. The Moderating Effects of Demographic Change and Social Capital on Farmers’ Willingness to Adopt New Agricultural Technologies
4.4. Endogeneity Problem
5. Conclusions and Policy Implications
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Variable | Variable Definition | Mean | Standard Deviation |
---|---|---|---|
Willingness to adopt new agricultural technologies | Actively adopt new agricultural technologies (1 = strongly agree; 2 = somewhat agree; 3 = generally agree; 4 = not quite agree; 5 = strongly disagree) | 2.54 | 0.89 |
Social networks: | |||
Homogeneous networks | Range of gifts for relatives and friends in the village for wedding events (1 = all of them go; 2 = most of them go; 3 = few of them go; 4 = rarely) | 1.92 | 0.92 |
Heterogeneous networks | The range of other people in the village (not relatives and friends) for wedding events and gifts (1 = all of them go; 2 = most of them go; 3 = few of them go; 4 = very few go) | 2.68 | 1.1 |
Social participation | |||
Participate in union activities | Participate in agricultural union activities (1 = yes; 2 = no) | 1.37 | 0.48 |
Repair the village road | Are you willing to participate/donate to repair village roads (1 = very willing; 2 = more willing; 3 = average; 4 = unwilling; 5 = very unwilling) | 1.92 | 0.83 |
Social trust | |||
Neighborhood mutual aid | Number of times you help your neighbors (1 = very much; 2 = somewhat; 3 = average; 4 = less; 5 = very little) | 2.54 | 0.98 |
Trust in neighbors | Do you trust the neighbors and other residents of this community (village)? (1 = very trust; 2 = trust; 3 = fair trust; 4 = distrust; 5 = very distrust) | 2.28 | 0.81 |
Moderator | |||
Demographic change | The number of instances of hukou migration | 1.17 | 0.55 |
Control variable | |||
Gender | 1 = male; 2 = female | 1.52 | 0.5 |
Income | 2017 total revenue (CNY) | 39,015.68 | 72,112.93 |
Political landscape | 1 = member of the Communist Party of China; 2 = democratic party; 3 = the masses | 2.86 | 0.5 |
Expenditures | Total consumption expenditure in 2017 (CNY) | 55,853.99 | 99,975.45 |
Variable | Model 1 | Model 2 | Model 3 | Model 4 | Model 5 |
---|---|---|---|---|---|
Social capital | |||||
Comprehensive indicators | 0.634 *** (0.15) | ||||
Social networks | 0.286 *** (0.09) | ||||
Homogeneous networks | 0.166 *** (0.03) | ||||
Heterogeneous networks | −0.003 (0.02) | ||||
Social participation | 0.123 (0.09) | ||||
Participate in agricultural union activities | 0.183 (0.22) | ||||
Repair village roads | 0.523 *** (0.14) | ||||
Social trust | 0.272 *** (0.11) | ||||
Neighborhood mutual aid | 0.090 *** (0.27) | ||||
Trust in neighbors | 0.083 ** (0.03) | ||||
Control variables | |||||
Gender | 0.289 (0.22) | 0.187 *** (0.04) | 0.372 (0.22) | 0.176 *** (0.04) | 0.292 (0.22) |
Income | −2.00 (2.03) | 5.260 (4.65) | −1.72 (2.05) | 2.71 (4.65) | −1.60 (2.06) |
Political landscape | −0.158 (0.13) | 0.203 *** (0.05) | −0.202 (0.135) | 0.197 *** (0.48) | −0.228 * (0.14) |
Expenditure | −1.73 (1.51) | 2.11 (2.95) | −4.81 (1.52) | 1.37 (2.93) | −3.88 (1.52) |
Variable | Model 6 | Model 7 | Model 8 | Model 9 |
---|---|---|---|---|
Eastern region | 0.285 *** (0.04) | |||
Central region | 0.132** (0.51) | |||
Western region | −0.381 *** (0.04) | |||
Northeast region | 0.042 (0.09) | |||
Control variables | ||||
Gender | 0.184 *** (0.04) | 0.187 *** (0.04) | 0.185 *** (0.04) | 0.184 *** (0.42) |
Income | −2.87 (4.60) | 1.43 (4.69) | −3.14 (4.60) | 8.98 (4.66) |
Political landscape | 0.212 (0.05) | 0.209 *** (0.05) | 0.200 *** (0.05) | 0.211 ** (0.05) |
Expenditure | 7.60 (2.94) | 1.93 (2.95) | 1.16 (2.95) | 1.86 (2.95) |
Variable | Model 10 | Model 11 | Model 12 | Model 13 |
---|---|---|---|---|
Social_cap | 0.903 *** (0.29) | |||
Social_net | 0.774 (0.20) | |||
Social_par | 0.127 (0.17) | |||
Social_trust | 0.349 (0.22) | |||
Moderator | ||||
Demo_change | 0.676 (0.42) | 0.854 ** (0.43) | 0.687 * (0.42) | 0.630 (0.42) |
Interaction terms | ||||
Social_cap × cha | −0.974 * (0.57) | |||
Social_net × cha | −1.239 ** (0.58) | |||
Social_par × cha | −0.801 (0.56) | |||
Social_tru × cha | −0.805 (0.56) | |||
Control variables | ||||
Gender | 0.462 (0.48) | 0.599 (0.49) | 0.569 (0.47) | 0.451 (0.48) |
Income | 0.462 (0.48) | 0.599 (0.49) | 0.569 (0.47) | 0.451 (0.48) |
Political landscape | −0.113 (0.24) | −1.333 (0.24) | −0.20 (0.24) | −1.390 (0.24) |
Expenditure | 6.50 (5.98) | 5.46 (6.11) | 4.72 (5.92) | 5.77 (6.00) |
Variable | Model 14 | Model 15 | Model 16 | Model 17 | ||||
---|---|---|---|---|---|---|---|---|
(1) | (2) | (1) | (2) | (1) | (2) | (1) | (2) | |
Social_cap | 0.996 *** (0.36) | |||||||
Social_net | 0.501 *** (0.19) | |||||||
Social_par | 4.24 (8.00) | |||||||
Social_trust | 1.938 (1.37) | |||||||
Health level | 0.240 *** (0.07) | 0.472 *** (0.12) | 0.056 (0.10) | 0.122 (0.09) | ||||
Control variables | Control | Control | Control | Control | Control | Control | Control | Control |
Gender | 0.098 (0.10) | −0.040 (0.14) | 0.177 (0.16) | −0.033 (0.13) | 0.100 (0.16) | −0.368 (1.00) | −0.036 (0.14) | 0.126 (0.28) |
Income | −1.82 (1.08) | −9.04 (1.43) | 2.43 (1.23) | −1.23 (1.33) | 4.17 (1.38) | −2.88 (6.32) | −1.75 (1.16) | 2.28 (3.39) |
Political landscape | 0.010 (0.06) | −0.126 (0.09) | 0.055 (0.10) | −0.062 (0.08) | −0.013 (0.10) | 0.019 (0.40) | 0.290 *** (0.07) | −0.597 (0.44) |
Expenditure | −0.799 (0.26) | 2.02 (8.94) | −3.52 (7.88) | 1.62 (6.37) | −7.32 (1.22) | 2.95 (7.97) | 8.22 (9.94) | −1.75 (2.06) |
Constant | −0.771 *** (0.26) | 3.009 *** (0.33) | −1.166 *** (0.41) | 2.824 *** (0.29) | −0.222 (0.40) | 3.18 * (1.66) | 0.908 *** (0.29) | 3.99 *** (1.06) |
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Han, M.; Liu, R.; Ma, H.; Zhong, K.; Wang, J.; Xu, Y. The Impact of Social Capital on Farmers’ Willingness to Adopt New Agricultural Technologies: Empirical Evidence from China. Agriculture 2022, 12, 1368. https://doi.org/10.3390/agriculture12091368
Han M, Liu R, Ma H, Zhong K, Wang J, Xu Y. The Impact of Social Capital on Farmers’ Willingness to Adopt New Agricultural Technologies: Empirical Evidence from China. Agriculture. 2022; 12(9):1368. https://doi.org/10.3390/agriculture12091368
Chicago/Turabian StyleHan, Mingyang, Ruifeng Liu, Hengyun Ma, Kaiyang Zhong, Jian Wang, and Yifan Xu. 2022. "The Impact of Social Capital on Farmers’ Willingness to Adopt New Agricultural Technologies: Empirical Evidence from China" Agriculture 12, no. 9: 1368. https://doi.org/10.3390/agriculture12091368
APA StyleHan, M., Liu, R., Ma, H., Zhong, K., Wang, J., & Xu, Y. (2022). The Impact of Social Capital on Farmers’ Willingness to Adopt New Agricultural Technologies: Empirical Evidence from China. Agriculture, 12(9), 1368. https://doi.org/10.3390/agriculture12091368