中产阶级
班级(哲学)
贫穷
中国
不平等
极化(电化学)
人口
计量经济学
家庭收入
地理
数学
经济
社会学
经济增长
人口学
计算机科学
考古
化学
人工智能
物理化学
数学分析
市场经济
作者
Gordon Anderson,Alessio Farcomeni,Maria Grazia Pittau,Roberto Zelli
标识
DOI:10.1016/j.jeconom.2015.12.006
摘要
Classifying agents into subgroups in order to measure the plight of the “poor”, “middle class” or “rich” is common place in economics, unfortunately the definition of class boundaries is contentious and beset with problems. Here a technique based on mixture models is proposed for surmounting these problems by determining the number of classes in a population and estimating the probability that an agent belongs to a particular class. All of the familiar statistics for describing the classes remain available and the possibility of studying the correlates of class membership is raised. As a substantive illustration we analyze household income in Urban China in the last decade of the 20th Century. Four income groups are classified and the progress of those “poor”, “lower middle”, “upper middle” and “rich” classes are related to household and regional characteristics.
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