Conceptual Framework of a Synthesized Adaptive e-Learning and e-Mentoring System Using VARK Learning Styles with Data Mining Methodology

Currently, e-learning systems are becoming more popular. This is because e-learning systems provide learners freedom to study with unlimited time and at any location. But, most of the e-learning systems present the same learning content without regard to different learning styles of learners. Many learners have to adapt to different learning styles such as learning content from images which is not specifically targeted at their needs. Meanwhile, other learners may have aptitude in reading or from listening, etc. Therefore, learning and teaching processes are important issues that teachers need to adjust their teaching according to individual learners. If each learner obtains content that aligns with their own learning style, it will lead to more achievement. The purpose of this research is to synthesize the learning model of adaptive e-learning and e-mentoring system in order to recommend learners and analyze the VARK learning style (VARK is an acronym for visual, aural, read/write, and kinesthetic) by using data mining methodology. The synthesized model consists of four modules which are 1) esaB eluR KRAV eludoM2) VARK Learner Module 3) Content Module and 4) Learning Module.

[1]  S. DiCarlo,et al.  Gender Differences In Learning Style Preference Among Undergraduate Physiology Students , 2006, Advances in physiology education.

[2]  Syed Ali Hassan,et al.  An adaptive E-learning Framework to supporting new ways of teaching and learning , 2009, 2009 International Conference on Information and Communication Technologies.

[3]  Susumu Yamasaki,et al.  A Framework for Adaptive e-Learning Systems in Higher Education with Information Visualization , 2007, 2007 11th International Conference Information Visualization (IV '07).

[4]  Melisa Koorsse,et al.  Motivation and learning preferences of information technology learners in South African secondary schools , 2010, SAICSIT '10.

[5]  Vanessa Marcy AdultLearningStyles: How the VARK©LearningStyle Inventory CanBe Usedto Improve StudentLearning , 2001 .

[6]  Boyan Bontchev,et al.  Courseware Authoring for Adaptive E-learning , 2009, 2009 International Conference on Education Technology and Computer.

[7]  H. Jahankhani,et al.  An adaptive e-learning Decision support system , 2012, 2012 15th International Conference on Interactive Collaborative Learning (ICL).

[8]  Camelia Vidrighin Bratu,et al.  Intelligent component for adaptive E-learning systems , 2009, 2009 IEEE 5th International Conference on Intelligent Computer Communication and Processing.

[9]  Qingzhang Chen,et al.  Research on adaptive e-Learning system using technology of learning navigation , 2013, 2013 8th International Conference on Computer Science & Education.

[10]  Gerhard Weber,et al.  Adaptive learning systems in the World Wide Web , 1999 .

[11]  Chen Jing,et al.  A Complex Adaptive E-Learning Model Based on Semantic Web Services , 2008, 2008 International Symposium on Knowledge Acquisition and Modeling.

[12]  V. Shute,et al.  Adaptive E-Learning , 2003, Educational Psychologist.

[13]  Norita Md Norwawi,et al.  Classification of students' performance in computer programming course according to learning style , 2009, 2009 2nd Conference on Data Mining and Optimization.

[14]  Sucheta V. Kolekar,et al.  Learning style recognition using Artificial Neural Network for adaptive user interface in e-learning , 2010, 2010 IEEE International Conference on Computational Intelligence and Computing Research.

[15]  Ilias Petrounias,et al.  A Framework for Using Web Usage Mining to Personalise E-learning , 2007, Seventh IEEE International Conference on Advanced Learning Technologies (ICALT 2007).