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Course Selection Optimization: Case study - Faculty of Science, University of Peradeniya, Sri Lanka

机译:优化课程选择:案例研究-斯里兰卡佩拉德尼亚大学理学院

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Elective course selection at universities is a complex decision process which is subjective to each individual student’s personality and skill set. The aim of this research is to use machine learning techniques and expert knowledge to suggest optimal course selections by considering the student skills (profile of the student) and the profiles of the courses offered at the university. It takes into consideration the fact that if a student is performing well in a particular course, he/she can select another course of the same nature to improve the student’s results and give a solution to the daunting task of selecting elective courses. The K-Nearest Neighbour algorithm resulted in ten course clusters for the dataset and accordingly students were grouped using the highest average course cluster GPA. Application of the expert knowledge method resulted in course clusters which can be split into clusters as stipulated by the Faculty. The approach was validated for computer science courses offered at the Faculty of Science, University of Peradeniya, Sri Lanka, as a case study from 2005 to 2012.
机译:大学的选修课程是一个复杂的决定过程,它取决于每个学生的个性和技能。这项研究的目的是利用机器学习技术和专家知识,通过考虑学生的技能(学生的概况)和大学提供的课程的概况来建议最佳课程选择。考虑到以下事实:如果学生在特定课程中表现良好,则他/她可以选择其他性质相同的课程,以提高学生的学习成绩,并为选择选修课程的艰巨任务提供解决方案。 K最近邻算法为数据集生成了十个课程簇,因此,使用最高平均课程簇GPA对学生进行了分组。专家知识方法的应用导致课程群可以按照学院的规定划分为群。 2005年至2012年,该方法已在斯里兰卡Peradeniya大学理学院提供的计算机科学课程中得到验证,作为案例研究。

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