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A Hybrid Course Recommendation System by Integrating Collaborative Filtering and Artificial Immune Systems

机译:集成协同过滤和人工免疫系统的混合课程推荐系统

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This research proposes a two-stage user-based collaborative filtering process using an artificial immune system for the prediction of student grades, along with a filter for professor ratings in the course recommendation for college students. We test for cosine similarity and Karl Pearson (KP) correlation in affinity calculations for clustering and prediction. This research uses student information and professor information datasets of Yuan Ze University from the years 2005–2009 for the purpose of testing and training. The mean average error and confusion matrix analysis form the testing parameters. A minimum professor rating was tested to check the results, and observed that the recommendation systems herein provide highly accurate results for students with higher mean grades.
机译:这项研究提出了一个基于用户的两阶段协作过滤过程,该过程使用人工免疫系统预测学生成绩,并在针对大学生的课程推荐中使用教授评级过滤器。我们在聚类和预测的亲和力计算中测试余弦相似度和Karl Pearson(KP)相关性。本研究使用源泽大学2005-2009年的学生信息和教授信息数据集进行测试和培训。平均平均误差和混淆矩阵分析形成测试参数。测试了最低教授评级以检查结果,并观察到这里的推荐系统为平均分较高的学生提供了高度准确的结果。

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