Comparative Study on the Different Testing Techniques in Tree Classification for Detecting the Learning Motivation
暂无分享,去创建一个
Having motivation to learn is a successful requirement in a learning process, and needs to be maintained properly. This study aims to measure learning motivation, especially in the process of electronic learning (e-learning). Here, data mining approach was chosen as a research method. For the testing process, the accuracy comparative study on the different testing techniques was conducted, involving Cross Validation and Percentage Split. The best accuracy was generated by J48 algorithm with a percentage split technique reaching at 92.19 %. This study provided an overview on how to detect the presence of learning motivation in the context of e-learning. It is expected to be good contribution for education, and to warn the teachers for whom they have to provide motivation.
[1] J. de Houwer,et al. What is learning? On the nature and merits of a functional definition of learning , 2013, Psychonomic Bulletin & Review.
[2] Shyh-Chyi Wey,et al. The Relationship among Tertiary Level EFL Students’ Personality, Online Learning Motivation and Online Learning Satisfaction☆ , 2013 .
[3] Dirk T. Tempelaar,et al. The role of academic motivation in Computer-Supported Collaborative Learning , 2009, Comput. Hum. Behav..