望加锡Atma Jaya大学信息技术学院学业成绩评估自动分类系统

Erick Alfons Lisangan, Dwi Marisa Midyanti, Chairul Mukmin, Astrid Lestari Tungadi
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引用次数: 0

摘要

摘要-信息技术学院目前在每学期结束时进行绩效评估,并将学生作为数据评估的来源。评估活动在s.fti.uajm.ac.id网站上进行。随着活跃学生人数的增加,需要阅读的评估数量和教员利益相关者阅读的评估数量也会增加。这与利益相关者需要阅读、评估和分类学生作为绩效评估的一部分输入的评论的时间成反比。本研究将对澳门大学资讯科技学院的学生评核意见进行多重分类。文本预处理将使用savastri库,其中包括停止词删除、词干提取和文本转换为TFIDF形式。预处理文本的结果将被用作朴素贝叶斯的输入,并使用三种场景来评估分类器模型。朴素贝叶斯算法对类别和情感标签的平均准确率分别为79%和81%。此外,本研究的预期结果是减少FTI UAJM利益相关者阅读和评论/建议的时间,因为评估结果是实时获得的。
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The Automatic Classification System for Academic Performance Evaluation at the Faculty of Information Technology Atma Jaya University of Makassar
Abstract - The Faculty of Information Technology currently carries out performance evaluations at the end of each semester and involves students as sources of data evaluation. The evaluation activity took place online on the website ss.fti.uajm.ac.id. With the number of active students, the number of evaluations that need to be read and the number read by faculty stakeholders also increases. This is inversely proportional to the time that stakeholders need time to read, evaluate, and categorize comments entered by students as part of the performance evaluation. In this study, a multi-classification of student comments related to evaluations at the Faculty of Information Technology UAJM will be carried out. Text pre-processing will use the Sastrawi library which includes stopword removal, stemming, and transformation of text into TFIDF form. The results of the pre-processing text will be used as input on Naive Bayes and using three scenarios to evaluate the classifier model. The average accuracy values of the Naive Bayes algorithm for category and sentiment labels are 79% and 81%, respectively. Furthermore, the expected result of this research is to reduce the time for FTI UAJM stakeholders to read and comment/suggest faster because the evaluation results are obtained in real-time.
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