Use of Utility Based Interestingness Measures to Predict the Academic Performance of Technology Learners in Sri Lanka

K. Kasthuriarachchi, S. Liyanage
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引用次数: 1

Abstract

Knowledge extracted from educational data can be used by the educators to obtain insights about how the quality of teaching and learning must be improved, how the factors a $\square$ ect the performance of the students and how qualified students can be trained for the industry requirements. This research focuses on classifying a knowledge based system using a set of rules. The main purpose of the study is to analyse the most influencing attributes of the students for their module performance in tertiary education in Sri Lanka. The study has gathered data about students in a reputed degree awarding institute in Sri Lanka and used three different data mining algorithms to predict the influential factors and they have been evaluated for interestingness using objective oriented utility based method. The findings of this study will positively a $\square$ ect the future decisions about the progress of the students' performance, quality of the education process and the future of the education provider.
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使用基于效用的兴趣度测量来预测斯里兰卡技术学习者的学习成绩
教育工作者可以使用从教育数据中提取的知识来了解如何提高教学质量,因素如何影响学生的表现,以及如何培训合格的学生以满足行业要求。本研究的重点是使用一组规则对基于知识的系统进行分类。本研究的主要目的是分析斯里兰卡高等教育中学生模块表现的最具影响力的属性。该研究收集了有关斯里兰卡一所著名学位授予机构的学生的数据,并使用三种不同的数据挖掘算法来预测影响因素,并使用面向目标的基于效用的方法对其趣味性进行了评估。本研究的结果将对未来有关学生成绩进步、教育过程质量和教育提供者未来的决策产生积极的影响。
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