Automatic detection of learning styles in learning management system by using literature-based method and support vector machine

Elfa Silfiana Amir, Malikus Sumadyo, D. I. Sensuse, Y. G. Sucahyo, H. Santoso
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引用次数: 14

Abstract

Each learner has their own preferences in the learning process. Differences in preferences are closely related to the learning style of each learner. Personalization of e-learning is an overview of online learning that has been customized content based on learning styles of each learner. Detecting learning style needs a technique that is effective and accurate. This study combines literature based method with Support Vector Machine (SVM) to detect students' learning styles. The data used is learning log data of Data Structures and Algorithms class at the Faculty of Computer Science, Universitas Indonesia. The test results showed that SVM has better accuracy compared to Naive Bayes.
基于文献法和支持向量机的学习管理系统学习风格自动检测
每个学习者在学习过程中都有自己的偏好。偏好的差异与每个学习者的学习风格密切相关。个性化电子学习是在线学习的一种概述,它根据每个学习者的学习风格定制内容。检测学习风格需要一种有效而准确的技术。本研究结合文献法与支持向量机(SVM)来检测学生的学习风格。使用的数据是印度尼西亚大学计算机科学学院数据结构与算法课程的学习日志数据。测试结果表明,与朴素贝叶斯相比,支持向量机具有更好的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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