4.7 Article

Prediction models and associated factors on the fertility behaviors of the floating population in China

Journal

FRONTIERS IN PUBLIC HEALTH
Volume 10, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fpubh.2022.977103

Keywords

floating population; fertility behaviors; prediction; artificial neural network; logistic regression; associated factors

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The study found that factors affecting the fertility behavior of the floating population include age, gender, education level, and family economic conditions, among which improving the duration of post-migration residence and family economic conditions positively impact reproductive behavior. Non-agricultural new industry workers with college degrees or above living in first-tier cities are less likely to have children and more likely to delay childbearing. Both the artificial neural network model and logistic regression model showed better prediction effects.
The floating population has been growing rapidly in China, and their fertility behaviors do affect urban management and development. Based on the data set of the China Migrants Dynamic Survey in 2016, the logistic regression model and multiple linear regression model were used to explore the related factors of fertility behaviors among the floating populace. The artificial neural network model, the naive Bayes model, and the logistic regression model were used for prediction. The findings showed that age, gender, ethnic, household registration, education level, occupation, duration of residence, scope of migration, housing, economic conditions, and health services all affected the reproductive behavior of the floating population. Among them, the improvement duration of post-migration residence and family economic conditions positively impacted their fertility behavior. Non-agricultural new industry workers with college degrees or above living in first-tier cities were less likely to have children and more likely to delay childbearing. Among the prediction models, both the artificial neural network model and logistic regression model had better prediction effects. Improving the employment and income of new industry workers, and introducing preferential housing policies might improve their probability of bearing children. The artificial neural network and logistic regression model could predict individual fertility behavior and provide a scientific basis for the urban population management.

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