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A data mining approach to guide students through the enrollment process based on academic performance

机译:一种数据挖掘方法,可根据学习成绩指导学生完成入学过程

摘要

Student academic performance at universities is crucial for educationmanagement systems. Many actions and decisions are made based on it, specifically the enrollment process. During enrollment, students have to decide which courses to sign up for. This research presents the rationale behind the design of a recommender system to support the enrollment process using the students’ academic performancerecord. To build this system, the CRISP-DM methodology was applied to data from students of the Computer Science Department at University of Lima, Perú. One of the main contributions of this work is the use of two synthetic attributes to improve the relevance of the recommendations made. The first attribute estimates the inherentdifficulty of a given course. The second attribute, named potential, is a measure of the competence of a student for a given course based on the grades obtained in relatedcourses. Data was mined using C4.5, KNN (K-nearest neighbor), Naïve Bayes, Bagging and Boosting, and a set of experiments was developed in order to determine the best algorithm for this application domain. Results indicate that Bagging is the bestmethod regarding predictive accuracy. Based on these results, the “Student Performance Recommender System” (SPRS) was developed, including a learning engine. SPRS was tested with a sample group of 39 students during the enrollment process. Results showed that the system had a very good performance under real-life conditions.
机译:大学的学生学习成绩对于教育管理系统至关重要。基于此做出许多动作和决定,特别是注册过程。在注册过程中,学生必须决定要注册哪些课程。这项研究提出了设计推荐系统的基本原理,以使用学生的学习成绩记录来支持注册过程。为了构建该系统,将CRISP-DM方法应用于秘鲁利马大学计算机科学系学生的数据。这项工作的主要贡献之一是使用两个综合属性来提高所提建议的相关性。第一个属性估计给定课程的固有难度。第二个属性,称为潜力,是根据相关课程中的成绩对给定课程的学生能力的衡量标准。使用C4.5,KNN(K近邻),朴素贝叶斯,装袋和增强来挖掘数据,并开发了一组实验以确定该应用领域的最佳算法。结果表明,套袋是预测准确性的最佳方法。基于这些结果,开发了包括学习引擎在内的“学生表现推荐系统”(SPRS)。在注册过程中,对39名学生的样本组进行了SPRS测试。结果表明,该系统在实际条件下具有很好的性能。

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