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Teaching evaluation using data mining on moodle LMS forum

机译:在moodle LMS论坛上使用数据挖掘进行教学评估

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摘要

Recently, teaching evaluation is defined the main part of quality in education. The students normally make answers on questionnaire that are divided into types; close-end question and open-end question. The close-end question is simple answer as multi-choices that are easily processed by statistical evaluation. On the other hand, open-end question gives the person answering in phrases or statements that are recommended their teacher. The problem is mostly LMS ignored these open-end questions to overall analysis. Therefore, analysis and processing of these open-end questions are very importance and determined teaching. This research presents analysis model for teaching evaluation from answering and posting a comment to discussion in form of open-end question obtained from moodle LMS forum using data mining techniques. The techniques extract classification of attitudes that are defined positive and negative attitude from students to instructor for improvement of learning and teaching. These classification models are compared three algorithms; ID3, BFTree and Naïve Bayes. The experimental results, the decision tree is achieved correctly classifier 80% compared with others.
机译:最近,教学评估被定义为教育质量的主要部分。学生通常在问卷上做出回答,回答分为几种类型;封闭式问题和开放式问题。封闭式问题是简单的答案,因为多项选择很容易通过统计评估进行处理。另一方面,开放式问题可以使学生用推荐给他们老师的短语或陈述来回答。问题主要是LMS忽略了这些开放性问题来进行整体分析。因此,对这些开放性问题的分析和处理非常重要,并且具有确定性。这项研究提出了一种分析模型,用于从评估和回答评论到讨论,以开放式问题的形式使用数据挖掘技术从穆德尔LMS论坛获得教学评估。这些技术提取了从学生到讲师的正面和负面态度的态度分类,以改善学习和教学。这些分类模型比较了三种算法; ID3,BFTree和朴素贝叶斯。实验结果表明,决策树正确分类器达到了80%。

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