Investigation of Variables Affecting PISA Success Levels of Countries with Different Success Levels with Data Mining Methods

Y. Kasap, Nuri Doğan, Cem Kocak
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Abstract

The aim of this research is to determine the important variables that predict the PISA 2018 reading comprehension achievement score of countries with different achievement levels, using 34 independent variables obtained from the student questionnaire given to the students who participated in PISA in 2018. For this purpose, 79 countries that participated PISA were ranked according to their success percentages then, these countries were sorted into lower, middle and upper group countries. A sample of lower, middle and upper group countries was formed then, three countries were selected from each of the lower group, middle group and upper group countries and a sample of lower, middle and upper group countries was formed. Data mining analyzes were carried out on the samples obtained by using the Classification and Regression Tree and Random Forest methods. It has been observed that the number of important variables that predict reading comprehension success can be reduced from 34 to three to eight. Like this; Data mining classification prediction models, which can predict the success level of PISA, were obtained by using a small number of variables. It has been determined that the models obtained have an acceptable level of predictive performance in predicting success in three categories (low, medium-high). The most important predictor variables obtained from the models are information and communication technologies resources, perception of reading difficulty, professional status expected from the student, perception of difficulty in the PISA test, reading pleasure, weekly test language learning time, disciplinary climate, socio-economic status index.
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用数据挖掘方法研究影响不同成功水平国家PISA成功水平的变量
本研究的目的是利用从2018年参加PISA的学生问卷中获得的34个自变量,确定预测不同成绩水平国家2018年PISA阅读理解成绩得分的重要变量。为此,79个参加PISA的国家根据他们的成功率进行了排名,然后将这些国家分为低、中、高组国家。然后形成了一个低、中、高组国家的样本,从低、中、高组国家中各选择了三个国家,形成了低、中、高组国家的样本。利用分类回归树和随机森林方法对得到的样本进行数据挖掘分析。据观察,预测阅读理解成功的重要变量的数量可以从34个减少到3到8个。像这样;利用少量变量获得了能够预测PISA成功程度的数据挖掘分类预测模型。已经确定,获得的模型在预测三类(低、中、高)的成功方面具有可接受的预测性能水平。从模型中得到的最重要的预测变量是信息和通信技术资源、对阅读困难的感知、学生期望的专业地位、对PISA测试困难的感知、阅读乐趣、每周测试语言学习时间、学科氛围、社会经济地位指数。
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