应用预测数据挖掘发现小学生语言技能表现的相关因素

IF 0.2 Q4 ENGINEERING, MULTIDISCIPLINARY
Ricardo Timarán-Pereira, Javier Caicedo-Zambrano, Andrea Timarán-Buchely
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引用次数: 0

摘要

在本文中,预测数据挖掘技术被应用于确定2017年哥伦比亚小学Saber 5°语言技能测试中五年级学生的学习成绩。我们采用了CRISP-DM方法。ICFES数据库提供了社会经济、学术和机构信息。使用数据清理和转换技术获得了可挖掘的数据集。利用Weka工具J48算法建立了决策树。所发现模式的一些预测因素是学校的性质和位置,无论学生是否在一学年中失败,年龄组,母亲的教育程度,以及信息通信技术和家用电器的普及率。这项研究的结果为国家教育部和教育部长的决策提供了高质量的信息,也为初等教育机构的负责人制定提高哥伦比亚初等教育质量的改进计划提供了信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying Predictive Data Mining to Discover Factors Associated to the Language Skill Performance from Elementary School Students
In this paper, predictive data mining techniques are applied to determine the academic performance from fifth grade students in the Saber 5° tests Language skill at Colombian elementary schools in 2017. We employed the CRISP-DM methodology.  Socioeconomic, academic, and institutional information was available at the ICFES databases. A minable dataset was obtained using data cleaning and transformation techniques. A decision tree was built with the Weka tool J48 algorithm. Some of the predictors of the discovered patterns are the nature and location of the school, whether or not students failed a school year, the age group, the mother's educational attainment, and the rates of ICTs and household appliances. The findings of this research serve as quality information for the decision-making at the Ministry of National Education (MEN) and the secretaries of education, and for the directors of elementary educational institutions to define improvement plans that result in the quality of elementary school education in Colombia.
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