使用 FP-Growth 算法开发用于学生成绩分析的关联规则,以此作为多学科学习的指南

W. Sriurai, S. Nuanmeesri
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引用次数: 0

摘要

本研究旨在利用 FP-Growth 算法为学生成绩分析制定关联规则。用于开发关联规则的数据包括 107 份学生报告。这些报告由 107 名初中学生自愿提供,包括 8 个学科领域的学生成绩:泰语、数学、科学、社会学、英语、计算机科学、视觉艺术和家政学。这些数据被用于使用机器学习软件 WEKA 的 FP-Growth 算法开发关联规则。研究小组设计的流程包括以下 5 个阶段:数据收集、数据准备、模型制定、模型评估和模型应用。在得出关联规则后,研究小组将其应用于学生成绩分析系统的原型开发,以促进学生学业成绩的提高。该系统可通过安卓手机进行操作。研究结果表明,该算法开发的关联规则的置信度为 92%,并将生成 7 条规则。研究结果表明,各学科领域之间存在相关性,这些领域的学生个人学习成绩相似(≥ 80 分)。关联规则可应用于多学科课程规划,使学生受益,并促进学业成绩的提高。例如,通过应用关联规则,可以假设英语学科成绩在 80 分或以上的学生在泰语课上的成绩可能相同。因此,他们可以有效地学习英语和泰语。举例来说,学生可能会被要求将歌词从英语翻译成泰语,担任导游或翻译,甚至为外宾致欢迎词。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The development of association rules for student performance analysis using FP-Growth algorithm as a guideline for multidisciplinary learning
This study aims to develop association rules for student performance analysis using the FP-Growth algorithm. The data used for developing the association rules comprised 107 student reports. The reports, voluntarily provided by 107 junior high school students, consisted of student achievement results across 8 subject areas: Thai Language, Mathematics, Science, Social Studies, English Language, Computing Science, Visual Arts, and Home Economics. The data was applied to developing association rules using the FP-Growth algorithm towards WEKA, a machine learning software. The research team designed the process consisting of the following 5 stages: data collection, data preparation, model formulation, model evaluation, and model application. After achieving the association rules, the research team applied them to the prototype development of a student performance analysis system for promoting students' academic excellence. The system could be operated by Android mobile phones. According to the research results, the association rules developed by the algorithm provided a confidence level of 92%, and a rule of 7 rules will be generated. The findings indicated the correlations between the subject areas, which shared similar individual students' academic achievements (≥ 80 scores). The association rules could be applied to the multidisciplinary curriculum planning, which benefited students and promoted academic excellence. For example, by applying Rule, it could be assumed that students who earned 80 scores or higher in the English subject would likely earn identical scores from their Thai Language class. Therefore, they could effectively learn to integrate English and Thai languages. To illustrate, students may be asked to translate song lyrics from English to Thai, serve as tourist guides or translators, or even give welcome speeches to foreign guests.
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