Preprocessing and analyzing educational data set using X-API for improving student's performance

Educational data mining concerns of developing methods to discover hidden patterns from educational data. The quality of data mining techniques depends on the collected data and features. In this paper, we proposed a new student performance model with a new category of features, which called behavioral features. This type of features is related to the learner interactivity with e-learning system. We collect the data from an e-Learning system called Kalboard 360 using Experience API Web service (XAPI). After that, we use some data mining techniques such as Artificial Neural Network, Naïve Bayesian, and Decision Tree classifiers to evaluate the impact of such features on student's academic performance. The results reveal that there is a strong relationship between learner behaviors and its academic achievement. Results with different classification methods using behavioral features achieved up to 29% improvement in the classification accuracy compared to the same data set when removing such features.

[1]  Zhang De-feng Data Mining Classification Calculation of SLIQ , 2005 .

[2]  Boumedyen A.N. Shannaq,et al.  Student Relationship in Higher Education Using Data Mining Techniques , 2010 .

[3]  George D. Kuh Assessing What Really Matters to Student Learning Inside The National Survey of Student Engagement , 2001 .

[4]  Jiawei Han,et al.  Data Mining: Concepts and Techniques , 2000 .

[5]  Tsong Yueh Chen,et al.  On the statistical properties of the F-measure , 2004, Fourth International Conference onQuality Software, 2004. QSIC 2004. Proceedings..

[6]  R. Suganya,et al.  Data Mining Concepts and Techniques , 2010 .

[7]  Pat Langley,et al.  Selection of Relevant Features and Examples in Machine Learning , 1997, Artif. Intell..

[8]  Ron Kohavi,et al.  Wrappers for Feature Subset Selection , 1997, Artif. Intell..

[9]  Violeta Moisa Adaptive Learning Management System , 2013 .

[10]  Alaa M. El-Halees Mining students data to analyze e-Learning behavior: A Case Study , 2009 .

[11]  Burcu Adigüzel Mercangöz A PATH MODEL FOR ANALYZING UNDERGRADUATE STUDENTS’ ACHIEVEMENT , 2014 .

[12]  A. Karegowda,et al.  COMPARATIVE STUDY OF ATTRIBUTE SELECTION USING GAIN RATIO AND CORRELATION BASED FEATURE SELECTION , 2010 .

[13]  Ergün Eroğlu,et al.  A Path Model For Analyzıng Undergraduate Students’ Achıevement , 2013 .

[14]  Suman,et al.  Comparative Analysis of Classification Algorithms on Different Datasets using WEKA , 2012 .

[15]  Alaa M. El-Halees,et al.  Mining educational data to improve students' performance: a case study , 2012 .

[16]  Selim Gunuc,et al.  Student engagement scale: development, reliability and validity1 , 2015 .

[17]  Mahmoud Abu Ghosh,et al.  Predicting Student Performance Using Artificial Neural Network: in the Faculty of Engineering and Information Technology , 2015 .

[18]  K. Shyamala,et al.  Data Mining Model for a Better Higher Educational System , 2006 .

[19]  Alma Harris Teaching and Learning in the Effective School , 1999 .

[20]  Jasmina Novakovic,et al.  Using Information Gain Attribute Evaluation to Classify Sonar Targets , 2009 .

[21]  Dean J Krusienski,et al.  A comparison of classification techniques for the P300 Speller , 2006, Journal of neural engineering.

[22]  Sebastián Ventura,et al.  Educational Data Mining: A Review of the State of the Art , 2010, IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews).