Factors Associated with Fertility Intention among Chinese Married Youth during the COVID-19 Pandemic
Abstract
:1. Introduction
2. Literature Review and Research Questions
3. Materials and Methods
3.1. Data Source
3.2. Measurement
3.3. Statistical Methods
4. Research Results
4.1. Descriptive Statistics of Fertility Structure and Fertility Intention in Married Youth
4.2. Results of Logistic Regression Analysis
4.3. Relative Importance of Different Factors on Fertility Intention
5. Conclusions and Policy Implications
5.1. Conclusions
5.2. Policy Implications
5.3. Limitations and Prospects
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Variables | Coding | Childless Family | One-Child Family | Two-Child Family | Chi-Square Test |
---|---|---|---|---|---|
Age | 20 to 25 | 42.5% | 51.4% | 6.1% | p < 0.001 |
26 to 30 | 34.2% | 56.5% | 9.3% | ||
31 to 35 | 7.6% | 69.4% | 23.0% | ||
Household registration | Agricultural | 17.9% | 65.7% | 16.5% | p < 0.001 |
Non-agricultural | 14.2% | 65.6% | 20.1% | ||
Ethnic group | Han | 14.9% | 65.6% | 19.5% | p < 0.01 |
Minority | 16.9% | 66.1% | 17.0% | ||
Education level | Junior high school or below | 3.5% | 57.4% | 39.0% | p < 0.001 |
Senior high/technical school | 6.7% | 68.3% | 25.0% | ||
3-year college | 16.4% | 67.5% | 16.1% | ||
4-year university | 23.5% | 64.7% | 11.8% | ||
Master degree or above | 33.4% | 55.5% | 11.1% | ||
Household economic status | Upper | 17.8% | 64.3% | 17.9% | p < 0.001 |
Upper-middle | 16.1% | 65.8% | 18.1% | ||
Middle | 16.6% | 66.4% | 17.0% | ||
Lower-middle | 15.8% | 65.3% | 18.9% | ||
Lower | 10.6% | 66.2% | 23.2% | ||
N = 13,794 | 15.3% | 65.7% | 19.0% |
Variables | Coding | Mean of Ideal Number of Children | Have Fertility Plan | F Test/ Chi-Square Test | Sample Size |
---|---|---|---|---|---|
Gender | Male | 1.732 | 23.6% | p < 0.001 p < 0.001 | 1895 |
Female | 1.639 | 15.3% | 11,899 | ||
Age | 20 to 25 | 1.555 | 29.5% | p < 0.001 p < 0.001 | 346 |
26 to 30 | 1.565 | 28.6% | 3537 | ||
31 to 35 | 1.686 | 11.6% | 9911 | ||
Household registration | Agricultural | 1.671 | 16.0% | p < 0.001 p < 0.05 | 9724 |
Non-agricultural | 1.607 | 17.5% | 4070 | ||
Ethnic group | Han | 1.640 | 16.4% | p = 0.062 p = 0.685 | 11,193 |
Minority | 1.663 | 16.7% | 2601 | ||
Change of marital relationship under the epidemic | More distant | 1.544 | 7.5% | p < 0.001 p < 0.001 | 704 |
No change | 1.642 | 15.2% | 11,009 | ||
More intimate | 1.741 | 25.7% | 2081 | ||
Delayed effect of pregnancy | More than 12 months | 1.612 | 6.7% | p < 0.001 p < 0.001 | 5232 |
6 to 12 months | 1.680 | 16.9% | 4781 | ||
3 to 6 months | 1.692 | 33.3% | 1985 | ||
Less than 3 months | 1.648 | 24.8% | 1796 | ||
Education level | Junior high school or below | 1.775 | 9.2% | p < 0.001 p < 0.001 | 1184 |
Senior high/technical school | 1.693 | 10.6% | 3971 | ||
3-year college | 1.647 | 17.2% | 3688 | ||
4-year university | 1.591 | 21.8% | 4625 | ||
Master degree or above | 1.626 | 28.5% | 326 | ||
Employment status | Stable job | 1.615 | 21.4% | p < 0.001 p < 0.001 | 5471 |
Unstable job | 1.700 | 12.8% | 2428 | ||
No job | 1.666 | 13.3% | 5895 | ||
Household economic status | Upper | 1.667 | 19.8% | p < 0.05 p < 0.001 | 2415 |
Upper-middle | 1.677 | 18.3% | 2870 | ||
Middle | 1.634 | 17.1% | 2905 | ||
Lower-middle | 1.646 | 15.3% | 2796 | ||
Lower | 1.637 | 12.0% | 2808 | ||
Expectation of children’s education | 3-year college degree or below | 1.601 | 17.9% | p < 0.001 p < 0.01 | 931 |
4-year university degree | 1.660 | 16.1% | 5156 | ||
Master degree or above | 1.643 | 16.4% | 7707 | ||
Perception of multi-child family advantage | Multi-child family is better for children’s development | 1.859 | 17.4% | p < 0.001 p = 0.076 | 3182 |
Multi-child family has no obvious advantage | 1.590 | 16.1% | 10,612 | ||
All samples | 1.652 | 16.4% | 13,794 |
Variables | Model 1: Ideal Number of Children | Model 2: Childless Families | Model 3: One-Child Families | Model 4: Two-Child Families |
---|---|---|---|---|
Socioeconomic Status | ||||
Education level | 0.952 *** (0.010) | 0.905 *** (0.034) | 0.968 (0.024) | 0.930 (0.088) |
Household economic status | 1.035 ** (0.016) | 1.004 (0.004) | 1.094 *** (0.037) | 1.004 (0.014) |
Employment status (no job = 0) | ||||
Stable job | 0.944 (0.048) | 0.884 (0.120) | 0.855 (0.098) | 1.098 (0.561) |
Unstable job | 1.035 (0.057) | 0.631 *** (0.112) | 0.879 (0.106) | 0.291 (0.226) |
Parenting Perception | ||||
Perception of multi-child family advantage (multi-child family has no obvious advantage = 0) | 2.995 *** (0.155) | 0.968 (0.125) | 1.354 *** (0.131) | 1.698 (0.707) |
Expectation of children’s education (3-year college degree or below = 0) | ||||
Master degree or above | 1.218 ** (0.095) | 1.615 ** (0.321) | 0.787 (0.138) | 0.724 (0.483) |
4-year university degree | 1.222 ** (0.096) | 1.313 (0.262) | 0.861 (0.151) | 0.964 (0.648) |
COVID-induced Factors | ||||
Change of marital relationship under the epidemic (more intimate = 0) | ||||
More distant | 0.732 *** (0.073) | 0.232 *** (0.080) | 0.666 * (0.159) | 0.470 (0.625) |
No change | 0.816 *** (0.046) | 0.596 *** (0.082) | 0.617 *** (0.070) | 0.456 * (0.201) |
Delayed effect of pregnancy (wait less than 3 months = 0) | ||||
Wait more than a year | 0.837 *** (0.051) | 0.201 *** (0.034) | 0.253 *** (0.035) | 0.118 *** (0.061) |
Wait six months to a year | 1.165 ** (0.072) | 0.565 *** (0.089) | 0.569 *** (0.072) | 0.262 *** (0.127) |
Wait three months to six months | 1.284 *** (0.094) | 1.799 *** (0.343) | 1.192 (0.164) | 0.3 99(0.237) |
Control Variables | ||||
Gender (female = 0) | 1.311 *** (0.074) | 1.131 (0.155) | 1.573 *** (0.192) | 2.299 * (1.151) |
Age (20 to 25 = 0) | ||||
26 to 30 | 1.143 (0.139) | 1.510 * (0.308) | 1.860 (0.750) | 0.819 (0.709) |
31 to 35 | 1.459 *** (0.173) | 2.583 *** (0.565) | 1.637 (0.658) | 0.246 (0.218) |
Household registration (non-agricultural = 0) | 1.149 *** (0.051) | 1.178 (0.137) | 1.217 * (0.132) | 2.037 (1.074) |
Ethnic group (minority = 0) | 0.944 (0.046) | 1.486 *** (0.189) | 0.990 (0.111) | 1.205 (0.700) |
Life satisfaction (unsatisfied = 0) | 1.183 *** (0.048) | 1.518 *** (0.173) | 1.532 *** (0.153) | 2.869 ** (1.393) |
Peer influence (only a few friends have kids = 0) | 2.385 *** (0.178) | 1.310 (0.308) | 2.227 *** (0.274) | 1.282 (0.532) |
Gender composition of child (only have girl(s) = 0) | ||||
Only have boy(s) | 1.048 (0.047) | 0.897 (0.079) | 0.830 (0.413) | |
Have both boy and girl | 5.375 *** (0.586) | 0.461 * (0.195) | ||
No child | 0.746 *** (0.039) | |||
Time span since last birth | 1.020 (0.013) | 0.800 (0.112) | ||
Log pseudolikelihood | −8170.149 | −1106.421 | −1969.273 | −131.178 |
Pseudo R2 | 0.088 | 0.134 | 0.080 | 0.180 |
Sample size | 13794 | 2111 | 9056 | 2627 |
Ideal Number of Children | Childless Families | One-Child Families | Two-Child Families | |
---|---|---|---|---|
Socioeconomic Status (Education Level, occupation, household income) | 0.130 *** (0.021) | 0.203 *** (0.056) | 0.140 *** (0.044) | 0.490 (0.299) |
Parenting Perception (Perception of multi-child family advantage, expectation of children’s education) | 0.467 *** (0.022) | 0.142 *** (0.053) | 0.141 *** (0.041) | 0.271 (0.194) |
COVID-induced Factors (Change of marital relationship under the epidemic, delayed pregnancy preparation due to vaccination) | 0.187 *** (0.020) | 0.816 *** (0.059) | 0.604 *** (0.048) | 0.768 *** (0.185) |
Control Variables | √ | √ | √ | √ |
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Peng, R.; Mou, W.; Xu, P. Factors Associated with Fertility Intention among Chinese Married Youth during the COVID-19 Pandemic. Behav. Sci. 2023, 13, 184. https://doi.org/10.3390/bs13020184
Peng R, Mou W, Xu P. Factors Associated with Fertility Intention among Chinese Married Youth during the COVID-19 Pandemic. Behavioral Sciences. 2023; 13(2):184. https://doi.org/10.3390/bs13020184
Chicago/Turabian StylePeng, Ruicheng, Wei Mou, and Peng Xu. 2023. "Factors Associated with Fertility Intention among Chinese Married Youth during the COVID-19 Pandemic" Behavioral Sciences 13, no. 2: 184. https://doi.org/10.3390/bs13020184