Title of article :
Developing a Course Recommender by Combining Clustering and Fuzzy Association Rules
Author/Authors :
Shokrollahi, Z Department of Engineering - College of Farabi - University of Tehran - Tehran, Iran , Asadi, Sh Department of Engineering - College of Farabi - University of Tehran - Tehran, Iran , Jafari, S.M Faculty of Management & Accounting, University of Tehran, Iran
Pages :
14
From page :
249
To page :
262
Abstract :
Each semester, students go through the process of selecting appropriate courses. It is difficult to find information about each course and ultimately make decisions. The objective of this work is to design a course recommender model that takes the students’ characteristics into account to recommend appropriate courses. The model uses clustering to identify the students with similar interests and skills. Once similar students are found, dependencies between student course selections are examined using fuzzy association rule mining. The application of clustering and fuzzy association rules results in appropriate recommendations and a predicted score. In this work, a collection of data on undergraduate students at the Management and Accounting Faculty of College of Farabi in the University of Tehran is used. The records are from 2004 to 2015. The students are divided into two clusters according to the educational background and demographics. Finally, the recommended courses and predicted scores are given to the students. The mined rules facilitate decision-making regarding course selection
Keywords :
Fuzzy Association Rules , Clustering K-means , Course Selection , Course Recommender Model
Journal title :
Astroparticle Physics
Serial Year :
2019
Record number :
2452964
Link To Document :
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