The Impact of Internet Use on Rural Women’s Off-Farm Work Participation: Empirical Evidence from China
Abstract
:1. Introduction
2. Theoretical Analysis and Hypotheses
2.1. The Impact of Internet Use on Rural Women’s Off-Farm Participation
2.2. Gender Role Perceptions and Rural Women’s Off-Farm Participation in the Internet Era
3. Context of the Study Area in China
3.1. Domestic and International Comparison of Women’s Labor Participation in China
3.2. Female Off-Farm Labor Participation in Rural China
4. Sampling and Study Design
4.1. Sampling and Data Sources
4.2. Model Setting and Variable Selection
5. Empirical Results and Analysis
5.1. Impact of Internet Use on Rural Women’s Off-Farm Work Participation
5.2. Analysis of the Mechanism of the Impact of Internet Use on Rural Women’s Participation in Off-Farm Work
5.3. Heterogeneous Analysis of the Impact of Internet Use on Rural Women’s Participation in Off-Farm Work
5.4. Endogeneity and Robustness Checks
5.4.1. Propensity Score Matching Estimation
5.4.2. Regression Estimation of Replacement Variables
5.4.3. Regression Estimation for Replacement Dataset
6. Discussion
7. Conclusions and Policy Recommendations
- (1)
- The use of the Internet is effective in increasing the likelihood of rural female participation in non-agricultural work and the increase in engagement with off-farm employed work is more pronounced than in the off-farm self-employment counterpart.
- (2)
- Women’s use of the Internet in rural areas for information browsing, learning, and socialization increases the efficiency of personal information acquisition, the level of human capital, and the level of social capital; this in turn promotes rural women’s off-farm work participation.
- (3)
- Modern social concepts have been disseminated through the use of the Internet and this has reduced rural women’s identification with traditional gender roles (“The exterior is managed by the male, the interior is managed by the female”) and promoted off-farm market work for rural women outside of domestic work.
- (4)
- Individual characteristics regulate the promotional effect of Internet use on rural female non-agricultural labor participation. A range of factors (the younger the age; the higher the level of education; the larger the number of children to be raised; the more economically developed the region of residence) increase the likelihood that the Internet will have a greater promotive effect on women’s off-farm participation in rural areas.
- (1)
- The government is expected to strengthen the infrastructural development of the Internet in rural areas of China (especially in western China and remote rural areas) and to promote better Internet broadband performance and lower costs in rural areas, in the expectation that this will increase the penetration and convenience of the Internet for rural women.
- (2)
- By taking into account the characteristics of regional industries and economies, the government will be able to provide targeted e-learning resources to rural women in the areas of job skills and basic education. In doing so, it will take full advantage of the role of Internet use in enhancing human capital.
- (3)
- The government should guide and support businesses in rural areas with the aim of helping them to establish Internet-based recruitment platforms that are responsive to the use patterns of women in rural areas. It should encourage enterprises to implement new work forms such as flexible work, telecommuting, and home-based work and improve the employment service and social security systems by introducing new employment forms.
- (4)
- The government should formulate special support policies for rural women’s entrepreneurship, such as financial subsidies, tax breaks, and loan supports, and should do this with the intention of encouraging and supporting rural women who are in a position to participate in non-farm work through self-employment.
- (5)
- The government should take advantage of the Internet’s high efficiency and low threshold in information dissemination and should do so with the aim of actively promoting values such as gender equality. It should encourage rural women to actively use the Internet for learning, socializing, and entrepreneurial activities and promote their involvement in off-farm work.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Variables | Unit | Full Sample | Internet Use | No Internet Use |
---|---|---|---|---|
Off-farm work | Off-farm work = 1; Agricultural work and non-work = 0 | 0.4278 (0.4948) | 0.5250 (0.4995) | 0.2184 (0.4134) |
Types of work | Agricultural work and non-work = 0; Self-employed off-farm work = 1; Employed off-farm work = 2 | 0.8378 (0.9495) | 1.0246 (0.9552) | 0.436 (0.801) |
Use of the Internet or not | Yes = 1; No = 0 | 0.6828 (0.4655) | ||
Age | Actual age at the time of the survey | 39.2352 (10.3856) | 35.9736 (9.7673) | 46.2566 (7.9077) |
Age2 | Age × Age | 1647.225 (807.0262) | 1389.457 (734.8067) | 2202.145 (663.5889) |
Educational attainment | Illiterate/semi-literate = 1; Primary education = 2; Junior middle education = 3; Senior middle education = 4; Specialty = 5; Undergraduate college = 6; Master = 7 | 2.6424 (1.3108) | 3.0232 (1.2822) | 1.8227 (0.9461) |
Marital Status | Unmarried/divorced/widowed =0; In Marriage/Cohabitation = 1 | 0.8882 (0.3152) | 0.8617 (0.3453) | 0.9452 (0.2278) |
Ethnicity | The Han Nationality =1; Others = 0 | 0.8851 (0.3190) | 0.9026 (0.2965) | 0.8472 (0.3600) |
Health status | Totally healthy = 1; Very healthy = 2; Pretty healthy = 3; Healthy = 4; Unhealthy = 5 | 2.8754 (1.1916) | 2.7798 (1.1035) | 3.0813 (1.3395) |
Family size | Based on the actual number of members of the household at the time of the survey | 4.7931 (2.0585) | 4.8462 (2.0660) | 4.6787 (2.0385) |
Number of children under 16 | Based on the number of children under 16 in the household at the time of the survey | 1.6080 (1.5288) | 1.6551 (1.4969) | 1.5064 (1.5914) |
Regional economy | Per capita GDP per province as of 2020 (CNY ten thousand) | 5.7101 (2.2530) | 5.7378 (2.3414) | 5.6505 (2.0498) |
Location | Eastern region = 1; Middle region = 2; Western region = 3; Northeast region = 4 | 2.3566 (0.9682) | 2.3371 (0.9881) | 2.3986 (0.9229) |
Sample size | 3219 | 2198 | 1021 |
Variables | Off-Farm Work | Self-Employed Off-Farm Work | Employed Off-Farm Work |
---|---|---|---|
Internet use | 0.0803 *** (0.0188) | 0.0385 *** (0.0129) | 0.0439 ** (0.0196) |
Age | 0.0130 * (0.0067) | 0.0079 * (0.0046) | 0.0098 (0.0067) |
Age2 | −0.0003 *** (0.0001) | −0.0001 (0.0001) | −0.0003 *** (0.0001) |
Educational attainment | 0.0808 *** (0.0069) | 0.0132 *** (0.0040) | 0.0694 *** (0.0068) |
Marital Status | −0.0842 *** (0.0281) | 0.0514 ** (0.0233) | −0.1398 *** (0.0274) |
Ethnicity | 0.0920 *** (0.0252) | −0.0120 (0.0155) | 0.1084 *** (0.0265) |
Health status | −0.0075 (0.0067) | −0.0029 (0.0039) | −0.0083 (0.0067) |
Family size | −0.0105 ** (0.0043) | 0.0016 (0.0026) | −0.0148 *** (0.0042) |
Number of children under 16 | −0.0100 * (0.0060) | 0.0013 (0.0037) | −0.0078 (0.0059) |
Location | −0.0286 *** (0.0090) | −0.0091 * (0.0054) | −0.0224 ** (0.0089) |
Regional economy | 0.0335 *** (0.0042) | 0.0020 (0.0021) | 0.0304 *** (0.0040) |
Waldχ2 | 17.9 *** | 22.83 *** |
Variables | Information Acquisition | Learning | Social Interaction | ||||||
---|---|---|---|---|---|---|---|---|---|
Off-Farm Work | Self-Employed Off-Farm Work | Employed Off-Farm Work | Off-Farm Work | Self-Employed Off-Farm Work | Employed Off-Farm Work | Off-Farm Work | Self-Employed Off-Farm Work | Employed Off-Farm Work | |
Internet use | 0.0561 *** (0.0198) | 0.0267 ** (0.0125) | 0.0293 (0.0206) | 0.0738 *** (0.0189) | 0.0360 *** (0.0130) | 0.0366 * (0.0197) | 0.0364 * (0.0207) | 0.0244 * (0.0142) | 0.0135 (0.0215) |
Information acquisition | 0.0224 *** (0.0063) | 0.0114 *** (0.0039) | 0.0130 ** (0.0065) | ||||||
Learning | 0.0771 *** (0.0251) | 0.0292 ** (0.0138) | 0.0888 *** (0.0244) | ||||||
Social interaction | 0.0245 *** (0.0049) | 0.0081 *** (0.0028) | 0.0172 *** (0.0048) | ||||||
Control variables | Control | Control | Control | Control | Control | Control | Control | Control | Control |
R2 | 0.2137 | 0.1841 | 0.1841 | 0.2131 | 0.1846 | 0.1846 | 0.2161 | 0.1854 | 0.1854 |
Sample size | 3218 | 3218 | 3218 | 3219 | 3219 | 3219 | 3215 | 3215 | 3215 |
Variables | Off-Farm Work | Self-Employed Off-Farm Work | Employed Off-Farm Work | ||||||
---|---|---|---|---|---|---|---|---|---|
(1) Logit | (2) OLS | (3) Logit | (1) Logit | (2) OLS | (3) Logit | (1) Logit | (2) OLS | (3) Logit | |
Internet use | 0.0803 *** (0.0188) | 0.9637 *** (0.0481) | 0.0620 *** (0.0189) | 0.0449 *** (0.0132) | 0.9637 *** (0.0481) | 0.0433 *** (0.0132) | 0.0525 *** (0.0192) | 0.9637 *** (0.0481) | 0.0360 * (0.1933) |
Gender Role Perception | 0.0485 *** (0.0060) | 0.0047 (0.0041) | 0.0433 *** (0.0060) | ||||||
Control variables | Control | Control | Control | Control | Control | Control | Control | Control | Control |
Sobel test | 0.0176 *** | 0.0017 | 0.0158 *** | ||||||
Bootstrap test | (0.0115, 0.0249) | (−0.0011, 0.0053) | (0.0094, 0.0224) | ||||||
Sample size | 3218 | 3218 | 3218 | 3218 | 3218 | 3218 | 3218 | 3218 | 3218 |
Off-Farm Work | Self-Employed Off-Farm Work | Employed Off-Farm WORK | Sample Size | |
---|---|---|---|---|
Age 16–30 | 0.1269 ** (0.0511) | 0.0499 (0.0517) | 0.0565 (0.0614) | 780 |
Age 31–45 | 0.0873 *** (0.0325) | 0.0415 * (0.0218) | 0.0558 * (0.0338) | 1291 |
Age 46–55 | 0.0585 ** (0.0237) | 0.0270 ** (0.0136) | 0.0370 (0.0231) | 1148 |
Low educational level | 0.0714 *** (0.0219) | 0.0282 ** (0.0115) | 0.0422 * (0.0217) | 1514 |
Medium education level | 0.1187 *** (0.0368) | 0.0288 (0.0263) | 0.0967 ** (0.0389) | 1388 |
High education level | −0.0400 (0.0817) | 0.0321 (0.0608) | −0.0519 (0.0898) | 317 |
The number of children under 16 = 0 | 0.0762 ** (0.0338) | 0.0339 (0.0208) | 0.0459 (0.0341) | 837 |
The number of children under 16 = 1 | 0.0222 (0.0339) | 0.0263 (0.0215) | −0.0071 (0.0354) | 924 |
The number of children under 16 = 2 | 0.1093 ** (0.0419) | 0.0708 ** (0.0351) | 0.0465 (0.0434) | 767 |
The number of children under 16 ≥ 3 | 0.1295 *** (0.0437) | 0.0274 (0.0287) | 0.1020 ** (0.0470) | 691 |
Eastern China | 0.0864 ** (0.0376) | 0.0482 (0.0317) | 0.0420 (0.0415) | 797 |
Central China | 0.0876 ** (0.0394) | 0.0825 ** (0.0324) | 0.0061 (0.0421) | 819 |
Western China | 0.0682 ** (0.0293) | 0.0340 * (0.0161) | 0.0384 (0.0293) | 1261 |
Northeast China | 0.0710 (0.0582) | −0.0364 (0.0316) | 0.1306 ** (0.0629) | 342 |
ATE | ATU | ATT | T Value | |
---|---|---|---|---|
Near neighbor matching k = 4 | 0.0722 | 0.0488 | 0.0832 *** | 2.58 |
Kernel matching | 0.0778 | 0.0602 | 0.0861 *** | 2.76 |
Radius matching | 0.0799 | 0.0636 | 0.0876 *** | 2.82 |
Variables | (1) | (2) | (3) | (4) | (5) |
---|---|---|---|---|---|
Internet use | 0.0789 *** (0.0187) | 0.0785 *** (0.0189) | 0.0733 *** (0.0189) | 0.0801 *** (0.0188) | |
Daily Internet hours | 0.0004 *** (0.0000) | ||||
Mandarin Use | 0.0386 ** (0.0165) | ||||
Memory ability | 0.0113 * (0.0059) | ||||
Reading status | 0.0680 *** (0.0188) | ||||
Work perception | −0.0177 (0.0117) | ||||
Control variables | Control | Control | Control | Control | Control |
Waldχ2 | 38.37 *** | 17.34 *** | 16.69 *** | 14.43 *** | 17.31 *** |
Sample size | 3219 | 3217 | 3209 | 3219 | 3213 |
Variables | Off-Farm Work | Self-Employed Off-Farm Work | Employed Off-Farm Work |
---|---|---|---|
Internet use | 0.1238 *** (0.0165) | 0.0227 ** (0.0113) | 0.0893 ** (0.0177) |
Individual characteristics variables | Control | Control | Control |
Household characteristics variables | Control | Control | Control |
Regional characteristic variables | Control | Control | Control |
Waldχ2 | 53.36 *** | 42.43 *** |
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Wang, W.; Zhang, S. The Impact of Internet Use on Rural Women’s Off-Farm Work Participation: Empirical Evidence from China. Sustainability 2022, 14, 16972. https://doi.org/10.3390/su142416972
Wang W, Zhang S. The Impact of Internet Use on Rural Women’s Off-Farm Work Participation: Empirical Evidence from China. Sustainability. 2022; 14(24):16972. https://doi.org/10.3390/su142416972
Chicago/Turabian StyleWang, Wei, and Shengbo Zhang. 2022. "The Impact of Internet Use on Rural Women’s Off-Farm Work Participation: Empirical Evidence from China" Sustainability 14, no. 24: 16972. https://doi.org/10.3390/su142416972
APA StyleWang, W., & Zhang, S. (2022). The Impact of Internet Use on Rural Women’s Off-Farm Work Participation: Empirical Evidence from China. Sustainability, 14(24), 16972. https://doi.org/10.3390/su142416972