The Classification of Chinese Personal Income Level Based on Bayesian Network

Lei Li, Xueli Wang, Juan Yang
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Abstract

In recent years, great changes have taken place in economy and society in China. However, income inequality is becoming more serious and it needs to be paid more attention. Therefore, the analysis of factors that affect income is important. The Bayesian network is a common method to study causal relationships among different variables. The paper analyzed personal annual income in 2016 in China based on the data of Chinese General Social Survey (CGSS) with the Bayesian network (BN). The research is to study the relationships among 14 income related factors and classify the personal income level. Based on the per capita disposable income in 2016 in China (23821 yuan), personal income was divided into two categories: High Income (personal income was greater than 23821) and Low Income (personal income was smaller than 23821). Then we applied BN to classify the level of personal income. The predicted classification results with Bayesian network were compared with those with Naïve Bayesian method. It could be found that BN could not only reflect the causal relationships among 14 variables, but also have higher prediction accuracy in this income problem.
基于贝叶斯网络的中国个人收入水平分类
近年来,中国的经济和社会发生了巨大的变化。然而,收入不平等越来越严重,需要引起更多的关注。因此,分析影响收入的因素是很重要的。贝叶斯网络是研究不同变量间因果关系的常用方法。本文基于中国综合社会调查(CGSS)数据,运用贝叶斯网络(BN)对2016年中国个人年收入进行分析。本研究是研究14个收入相关因素之间的关系,并对个人收入水平进行分类。根据2016年中国人均可支配收入(23821元),将个人收入分为高收入(个人收入大于23821元)和低收入(个人收入小于23821元)两类。然后运用BN对个人收入水平进行分类。将贝叶斯网络的预测分类结果与Naïve贝叶斯方法的预测分类结果进行比较。可以发现,BN不仅可以反映14个变量之间的因果关系,而且在该收入问题中具有较高的预测精度。
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