Statistical and Clustering Based Rules Extraction Approaches for Fuzzy Model to Estimate Academic Performance in Distance Education.

The demand for distance education has been increasing at a rapid pace all around the world. This, in turn, places a special importance on the need for the development of more distance education systems. However, there is an alarming rise in the number of distance education students that drop out of the system without asking for any help. The present study focuses on forming three fuzzy-based models through K-Means, C-Means and subtractive clustering. The models are designed to predict students’ year-end academic performance based on the 8-week data kept in the learning management system (LMS). Next, the models are evaluated in terms of their accuracy in order to determine the most suitable one. Then, the data was analyzed through various statistical methods and the results were compared. The model provides invaluable information regarding the students’ year-end success or failure by analyzing the data on Basic Computer Skills, a course included in the curriculum for sophomores at a local university. Thanks to such information, those who are likely to drop out can be determined and accordingly, the institution can start to take measures to encourage students not to drop out early in the semester, which, in turn, can increase the extent to which distance education can be successful. The present study will hopefully decrease the number of students that drop out of distance education systems.

[1]  J. Hossen,et al.  A Modified Hybrid Fuzzy Clustering Algorithm for Data Partitions , 2011 .

[2]  S. Sivanandam,et al.  Introduction to Fuzzy Logic using MATLAB , 2006 .

[3]  Andy P. Field,et al.  Discovering Statistics Using SPSS , 2000 .

[4]  Sebastián Ventura,et al.  Predicting Student Grades in Learning Management Systems with Multiple Instance Genetic Programming. , 2009, EDM 2009.

[5]  Witold Pedrycz,et al.  Advances in Fuzzy Clustering and its Applications , 2007 .

[6]  Chien-Hung Liu,et al.  Learning effectiveness in a Web-based virtual learning environment: a learner control perspective , 2005, J. Comput. Assist. Learn..

[7]  Michio Sugeno,et al.  Fuzzy identification of systems and its applications to modeling and control , 1985, IEEE Transactions on Systems, Man, and Cybernetics.

[8]  Vassilis Loumos,et al.  Dropout prediction in e-learning courses through the combination of machine learning techniques , 2009, Comput. Educ..

[9]  Jianhong Wu,et al.  Data clustering - theory, algorithms, and applications , 2007 .

[10]  V. Ramesh,et al.  Predicting Student Performance: A Statistical and Data Mining Approach , 2013 .

[11]  R. A. Rahmat,et al.  GENERATION OF FUZZY RULES WITH SUBTRACTIVE CLUSTERING , 2005 .

[12]  K. Rajeswari,et al.  Attributes Selection for Predicting Students' Academic Performance using Education Data Mining and Artificial Neural Network , 2014 .

[13]  M. Balazinski,et al.  Type-2 Takagi-Sugeno-Kang Fuzzy Logic Modeling using Subtractive Clustering , 2006, NAFIPS 2006 - 2006 Annual Meeting of the North American Fuzzy Information Processing Society.

[14]  Stephen L. Chiu,et al.  Fuzzy Model Identification Based on Cluster Estimation , 1994, J. Intell. Fuzzy Syst..

[15]  Nadine Meskens,et al.  Predicting Academic Performance by Data Mining Methods , 2007 .

[16]  Hsin-Hung Wu,et al.  A review of the application of RFM model , 2010 .

[17]  Abdullah Bal,et al.  Improved Fuzzy Modelling to Predict the Academic Performance of Distance Education Students. , 2013 .

[18]  Sarah Franklin,et al.  ROBUST MULTIVARIATE OUTLIER DETECTION USING MAHALANOBIS’ DISTANCE AND MODIFIED STAHEL-DONOHO ESTIMATORS , 2001 .

[19]  K. Rajeswari,et al.  Predicting Students Academic Performance Using Education Data Mining , 2013 .

[20]  Ahmet Tekin Early Prediction of Students' Grade Point Averages at Graduation: A Data Mining Approach. , 2014 .

[21]  M. Kalogiannakis,et al.  Moodle as a Learning Environment in Promoting Conceptual Understanding for Secondary School Students , 2013 .

[22]  Dimitrios Kalles,et al.  ANALYZING STUDENT PERFORMANCE IN DISTANCE LEARNING WITH GENETIC ALGORITHMS AND DECISION TREES , 2006, Appl. Artif. Intell..