Rural Credit Constraint and Informal Rural Credit Accessibility in China
Abstract
:1. Introduction
2. Literature Review
2.1. Factors Affecting Credit Constraint from Formal Credit Sources
2.2. Factors Affecting Credit from Informal Credit Sources
2.3. Impact of Credit Constraint on the Household’s Welfare
3. Conceptual Framework and Research Methods
3.1. Conceptual Framework and Analytic Strategy
3.2. Empirical Models
3.2.1. Determinants of the Household’s Credit Constraint
3.2.2. Test for Robustness
3.2.3. Evaluation of the Impact of Credit Constraints on Rural Farm Households’ Welfare
4. Data and Descriptive Statistics
5. Empirical Results
5.1. Determinants of Credit Constraints
5.2. Determinants of Informal Borrowing
5.3. Impact of Credit Constraints on Household Welfare
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Variables | Description |
---|---|
Ln (annual household consumption expenditures) | Ln (Total amount of consumer spending which includes the spending on food, water bill, local transport costs etc.) |
Constrained | 1 = if household’s credit constrained, 0 = unconstrained |
Gender | 1 = if household is male, 0 = female |
Age (middle age group) | 1 = if household is between 35–55, 0 = otherwise |
Family size | The number of people in the family |
Marital Status | 1 = single 0 = married |
Annual household nonagricultural income (wage, bonus and other nonagricultural activities related income) | 1 = less than 20,000RMB, 2 = 20,000–30,000RMB, 3 = 30,000–50,000RMB, 4 = 50,000–100,000RMB, 5 = 100,000–200,000RMB, 6 = more than 200,000RMB |
Education level | 1 = high school or higher, 0 = less than high school |
Respondents with children | 1 = have children, 0 = otherwise |
Money borrowed from other informal sources (nonbank loans) | 1 = Yes; 0 = No |
Social networks | 1 = from parents/parents in law, children, siblings, other relatives, friends/colleagues, a person or institute respondent has partnered with before 0 = otherwise |
Communication expenses | The average monthly amount family spent on communication expenses such as telephone and internet fees last year |
Occupation (farmer) | 1 = respondent’s occupation is farmer 0 = otherwise |
Characteristics | Credit Constrained Household | Credit Unconstrained Household | All Respondents | Statistical Test | |||
---|---|---|---|---|---|---|---|
Count | Percent | Count | Percent | Count | Percent | ||
Gender | |||||||
Male | 860 | 65.05 | 4684 | 63.75 | 5544 | 63.94 | = 08,311 (ns) |
Female | 462 | 34.95 | 2664 | 36.25 | 3126 | 36.06 | |
Age group | |||||||
Below 35 | 137 | 10.36 | 818 | 11.13 | 955 | 11.02 | = 17.9424 *** |
35–55 | 727 | 54.99 | 3582 | 48.75 | 4309 | 49.70 | |
Above 55 | 458 | 34.65 | 2948 | 40.12 | 3406 | 39.28 | |
Education level | |||||||
Primary school or lower | 733 | 55.45 | 3763 | 51.21 | 4496 | 51.86 | = 8.0494 *** |
High school and above | 589 | 44.55 | 3585 | 48.79 | 4174 | 48.14 | |
Borrowed from friends and relatives | |||||||
Relatives and friends | 550 | 41.60 | 927 | 12.62 | 1477 | 17.04 | = 666.1381 *** |
Nonrelatives and friends | 772 | 58.40 | 6422 | 87.40 | 7193 | 82.96 | |
Main Occupation | |||||||
Farm | 1013 | 76.62 | 5143 | 69.99 | 6156 | 71.00 | = 38.5667 *** |
Nonfarm | 148 | 11.20 | 1332 | 18.13 | 1480 | 17.07 | |
Missing value | 161 | 12.18 | 873 | 11.88 | 1034 | 11.93 | |
Household size | |||||||
Mean | 4.43 | - | 4.4 | - | 4.41 | - | t = −4.7569 *** |
Number of labour | |||||||
Mean | 11.75 | - | 11.42 | - | 11.47 | - | t = −0.0826 (ns) |
Number of Children | |||||||
Mean | 2.87 | - | 2.76 | - | 2.78 | - | t = −1.7816 * |
Income | |||||||
Less than 20,000RMB | 999 | 75.57 | 4935 | 67.16 | 5934 | 68.44 | = 51.2724 *** |
20,000–300,000RMB | 113 | 8.55 | 655 | 8.91 | 768 | 8.86 | |
30,000–50,000RMB | 133 | 10.06 | 914 | 12.44 | 1047 | 12.08 | |
50,000–100,000RMB | 58 | 4.39 | 667 | 9.08 | 725 | 8.36 | |
100,000–200,000RMB | 15 | 1.13 | 147 | 2.00 | 162 | 1.87 | |
More than 200,000RMB | 4 | 0.30 | 30 | 0.41 | 34 | 0.39 | |
Ln (Consumption per capital) | |||||||
Mean | 10.30 | - | 10.40 | - | 10.39 | - | t = 3.6044 *** |
Univariate Probit | Marginal Effect | Bivariate Probit | Marginal Effect | |
---|---|---|---|---|
Gender | 0.0244 (0.502) (ns) | 0.0058 | 0.0320 (0.387) (ns) | 0.0023 |
Age_middle | 0.0736 (0.047) ** | 0.0162 | 0.0787 (0.037) ** | 0.0011 |
Family size | 0.0440 (0.000) *** | 0.0100 | 0.0425 (0.000) *** | 0.0006 |
Marital status | 0.0205 (0.742) (ns) | 0.0077 | 0.0202 (0.741) (ns) | 0.0003 |
Annual household nonagricultural income | −0.1097 (0.000) *** | −0.02105 | −0.1106 (0.000) *** | -0.0030 |
Education level | −0.1026 (0.004) *** | −0.02108 | −0.1016 (0.004) *** | -0.0014 |
Children | −0.0389 (0.475) (ns) | −0.0043 | −0.0386 (0.480) (ns) | -0.0042 |
Money borrowed from informal sources | 0.8723 (0.000) *** | 0.2542 | 0.8910 (0.000) *** | 0.0171 |
rho | −0.982 (0.073) * |
Univariate Probit | Marginal Effect of Univariate Probit | Bivariate Probit | Marginal Effect Bivariate Probit | |
---|---|---|---|---|
Gender | 0.1162 (0.175) (ns) | 0.0165 | 0.1212 (0.161) (ns) | 0.0023 |
Marital status | 0.0770 (0.580) (ns) | 0.0112 | 0.0791 (0.595) (ns) | 0.0012 |
Annual household nonagricultural income | −0.0929 (0.027) ** | -0.0135 | −0.0923 (0.019) ** | −0.0030 |
Children | −0.2682 (0.014) ** | −0.0349 | −0.2745 (0.011) ** | −0.0042 |
Social networks | 5.2277 (0.000) *** | 0.9866 | 5.2415 (0.000) *** | 0.1349 |
Communication expenses | −0.0008 (0.048) ** | −0.0001 | −0.0008 (0.010) ** | −0.0001 |
rho | −0.982 (0.073) * |
Endogenous Switching Model | OLS | |||
---|---|---|---|---|
Variable Name | Credit Unconstrained | Credit Constrained | Credit Unconstrained | Credit Constrained |
Gender | −0.0328 (0.116) (ns) | 0.0263 (0.597) (ns) | −0.0326 (0.096) (ns) | 0.0170 (0.719) (ns) |
Age middle | 0.2064 (0.000) *** | 0.1963 (0.000) *** | 0.1895 (0.000) *** | 0.2056 (0.000) *** |
Family size | 0.0666 (0.000) *** | 0.0761 (0.000) *** | 0.0613 (0.000) *** | 0.0696 (0.000) *** |
Marital status | −0.2027 (0.000) *** | −0.2249 (0.008) *** | −0.1842 (0.000) *** | −0.1972 (0.014) ** |
Annual household nonagricultural income | 0.0437 (0.000) *** | 0.0501 (0.044) ** | 0.0556 (0.000) *** | 0.0553 (0.023) ** |
Education level | 0.2663 (0.000) *** | 0.1957 (0.000) *** | 0.3060 (0.000) *** | 0.2589 (0.000) *** |
Children | −0.3997 (0.000) *** | −0.4355 (0.000) *** | −0.4403 (0.000) *** | −0.4184 (0.000) *** |
Communication expenses | 0.0017 (0.000) *** | 0.0023 (0.000) *** | 0.0017 (0.000) *** | 0.0025 (0.000) *** |
Social networks | −0.0236 (0.425) (ns) | 0.2494 (0.105) (ns) | −0.0265 (0.357) (ns) | 0.2544 (0.083) * |
Money borrow from informal credit sources | −0.2150 (0.159) (ns) | −0.2449 (0.094) * | ||
Constant | 9.924 (0.000) *** | 8.862 (0.000) *** | 9.7497 (0.000) *** | 9.5111 (0.000) *** |
0.7538 (0.000) *** | ||||
0.5114 (0.001) *** | ||||
Log likelihood | −12004.219 | |||
Wald test | 2847.58 *** | |||
LR test | 163.01 (0.000) *** |
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Lin, L.; Wang, W.; Gan, C.; Cohen, D.A.; Nguyen, Q.T.T. Rural Credit Constraint and Informal Rural Credit Accessibility in China. Sustainability 2019, 11, 1935. https://doi.org/10.3390/su11071935
Lin L, Wang W, Gan C, Cohen DA, Nguyen QTT. Rural Credit Constraint and Informal Rural Credit Accessibility in China. Sustainability. 2019; 11(7):1935. https://doi.org/10.3390/su11071935
Chicago/Turabian StyleLin, Liqiong, Weizhuo Wang, Christopher Gan, David A. Cohen, and Quang T.T Nguyen. 2019. "Rural Credit Constraint and Informal Rural Credit Accessibility in China" Sustainability 11, no. 7: 1935. https://doi.org/10.3390/su11071935
APA StyleLin, L., Wang, W., Gan, C., Cohen, D. A., & Nguyen, Q. T. T. (2019). Rural Credit Constraint and Informal Rural Credit Accessibility in China. Sustainability, 11(7), 1935. https://doi.org/10.3390/su11071935