Decision Tree Model for Educational Services Predicting Children's Academic Performance by Income Group

Q3 Social Sciences
Hae-Seon Park, H. Lim, Hyun Ok Kim
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Abstract

Background and objective: This study used the decision tree analysis among data mining techniques to determine whether children's academic performance can be classified and predicted by income group based on factors of educational services.Methods: For empirical analysis, data from the 10th Panel Study on Korean Children collected in 2017 was utilized. A F test was conducted to analyze the differences in variables by income group, and a decision tree analysis was conducted on the cost and time of private education services utilized by children to predict their academic performance by income group.Results: First, as a result of analyzing the research variables by income group, there was a significant difference in institute time, community center time, institute cost, lesson cost, after-school cost, and culture center cost. Second, as a result of the decision tree analysis that predicts children's academic performance by income group, it was found that for children in the low-income group, institute cost, institute time, visiting cost, and after-school time were important variables that predict their academic performance. For children in the middle-income group, institute cost, after-school time, and after-school cost were important variables for predicting academic performance. For children in the high-income group, the important variables were institute time, institute cost, after-school time, and after-school cost.Conclusion: There was no significant difference in children's academic performance in the earlier grades of elementary school, but there was a significant difference in the private education service they utilized, which may affect future income gaps as well as education gaps. This suggested the need to diversify and improve the quality of public education services as a countermeasure for the fact that parental income will cause an academic gap among children through private education.
教育服务预测不同收入群体儿童学业成绩的决策树模型
背景与目的:本研究采用数据挖掘技术中的决策树分析,确定基于教育服务因素的儿童学习成绩是否可以按收入群体分类和预测。方法:利用2017年第10次韩国儿童专题研究的数据进行实证分析。采用F检验分析不同收入群体的变量差异,采用决策树分析儿童使用私立教育服务的成本和时间预测不同收入群体的学习成绩。结果:第一,按收入组别对研究变量进行分析,在学习时间、社区中心时间、学习成本、课程成本、课后成本和文化中心成本上存在显著差异。其次,根据收入群体预测儿童学习成绩的决策树分析结果发现,低收入群体儿童的学习成本、学习时间、访问成本和课外时间是预测其学习成绩的重要变量。对于中等收入群体,学校费用、课后时间和课后费用是预测学习成绩的重要变量。对于高收入组儿童,重要变量为学习时间、学习成本、课后时间和课后成本。结论:小学低年级儿童的学业成绩无显著差异,但他们使用的民办教育服务存在显著差异,这可能会影响未来的收入差距和教育差距。这表明,父母的收入通过课外教育导致子女之间的学业差距,因此有必要提高公共教育服务的多样性和质量。
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来源期刊
Journal of People, Plants, and Environment
Journal of People, Plants, and Environment Social Sciences-Urban Studies
CiteScore
1.10
自引率
0.00%
发文量
42
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