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New Classification Algorithms for Developing Online Program Recommendation Systems

机译:开发在线计划推荐系统的新分类算法

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This paper presents two novel nearest-neighbor-like classification algorithms for program recommendation in a Web-based system, which provides a program planning service to academic advisors and students of post-secondary institutions. To evaluate the accuracy of classification for program recommendations generated by our algorithm, a statistical study was conducted through comparing our algorithm against two well-known classification algorithms, the Naïve Bayes algorithm and the J48 algorithm, for making recommendations to students based on their academic history. The study shows that our proposed nearest-neighbor-like algorithms outperform the two well-known classification algorithms in terms of student classification success rate when there is uncertainty present in the data.
机译:本文介绍了两种新的最近邻的分类算法,可在基于Web的系统中的计划建议,为学术顾问和后级机构的学生提供计划计划服务。为了评估我们算法生成的程序建议的分类准确性,通过将我们的算法与两个公知的分类算法,天真贝叶斯算法和J48算法进行比较来进行统计研究,以便根据学术历史向学生提出建议。该研究表明,当数据中存在不确定性时,我们所提出的最近邻近的算法优于学生分类成功率的两个公知的分类算法。

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