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基于多元线性回归分析泰州市大学生消费 被引量:2

Analysis of College Students' Consumption in Taizhou City Based on Multiple Linear Regression
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摘要 在我国如今有近4000万大学生,而大学生又是一个特殊的群体,他们缺乏社会经验又易于接受新鲜事物,他们的消费尤其值得我们关注。我们基于多元线性回归,利用r语言处理2018年泰州市大学生消费数据,探究大学生消费行为与月生活费及消费观念的关系,研究大学生消费情况并给出相应的消费建议。 There are 40.00 million college students in China today,and college students are a special group.They lack social experience and are easy to accept new things.Their consumption is especially worthy of our attention.Based on multiple linear regression,we use r language to process the consumption data of college students in Taizhou in 2018,explore the relationship between college students'consumption behavior and monthly living expenses and consumption concepts,study the consumption situation of college students and give corresponding consumption suggestions.
作者 聂绪吉 贲悦涵 杨琴 Nie Xuji;Yan Yuehan;Yang Qin(Taizhou College of Mathematics and Physics,Taizhou,Jiangsu 225300)
出处 《江苏商论》 2018年第9期14-16,共3页 Jiangsu Commercial Forum
关键词 大学生消费 多元线性回归 Kruskal-Wallis检验 college students'consumption multiple linear regression Kruskal-Wallis test
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