Recommender System of Final Project Topic Using Rule-based and Machine Learning Techniques

Cut Fiarni, Herastia Maharani, Billy Lukito
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引用次数: 1

Abstract

The final project is a mandatory graduation requirement for bachelor's degree students. However, students often having problems in determining topic that is suitable with their interests and competencies. As a result, some students might have to change their topics halfway, which can affect their study period. Ironically, the abundant volume of previous final project documents available in the university library only add more confusion and difficulty for the students in finding relevant references for their research topic. Therefore, the focus of this research is to implement a machine learning approach to analyze and model an algorithm to recommend final project topics, based on student's interest, competencies, and their respective supervisor. This research also aims to establish a framework to map academic attributes, as part of feature selection. As the result, we develop a recommender system based on cosine similarity algorithm to recommend topics based on similarity between student's profile and topics represented by lists of keywords. Performance is measured by comparing the recommendations given by the proposed system against the actual topic chosen by students, with a very satisfying result of 71.43% precision.
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基于规则和机器学习技术的期末专题推荐系统
最终项目是学士学位学生的强制性毕业要求。然而,学生在确定适合自己兴趣和能力的话题时经常遇到问题。因此,一些学生可能不得不中途改变他们的主题,这可能会影响他们的学习时间。具有讽刺意味的是,大学图书馆中大量的以前的期末项目文件只会给学生寻找研究课题的相关参考资料增加更多的困惑和困难。因此,本研究的重点是实现一种机器学习方法来分析和建模一种算法,以根据学生的兴趣、能力和各自的导师推荐最终项目主题。本研究还旨在建立一个框架来映射学术属性,作为特征选择的一部分。因此,我们开发了一个基于余弦相似度算法的推荐系统,根据学生的个人资料与关键词列表表示的主题之间的相似度来推荐主题。通过比较所提出的系统给出的建议和学生选择的实际主题来衡量性能,结果非常令人满意,精度为71.43%。
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