DocumentCode
3580870
Title
Learning content personalization based on triple-factor learning type approach in e-learning
Author
Suryani, Mira ; Santoso, Harry Budi ; Hasibuan, Zainal A.
Author_Institution
Digital Libr. & Distance Learning Lab., Univ. of Indonesia, Depok, Indonesia
fYear
2014
Firstpage
494
Lastpage
501
Abstract
One of the emerging issue in e-learning is to create adaptive learning based on learner´s perspective. Adaptive learning can be realized through personalization of e-learning. Personalized learning help learners to use their best performance in order to reach learning goals based on their needs, preferences, and characteristics. To accomodate different characteristics of the learners, learning content personalization system based on triple-factor learning type was developed. The characteristics of 36 triple-factor learning type were used as input for learning content personalization algorithm to produce learning content that suitable for the learners´s learning type. The algorithm implemented into a system which called SCELE-Personalization Dynamic E-learning. The system was used by 118 learners in Science Writing course at the Faculty of Computer Science, Universitas Indonesia as experimental group. In order to find the best learning performance, the exam score from experiment group were compared with the exam score from control group. The result shows learning performance of experimental group that used personalized learning feature is better than learning performance of control group who used non-personalized learning feature. It can be seen from significant value (p<;0,05) and the different mean score of the experimental group that reach 13,68.
Keywords
computer aided instruction; educational courses; Faculty of Computer Science; SCELE-personalization dynamic e-learning; Universitas Indonesia; adaptive learning; learning content personalization; personalized learning; science writing course; triple-factor learning type; Abstracts; Decision support systems; Materials;
fLanguage
English
Publisher
ieee
Conference_Titel
Advanced Computer Science and Information Systems (ICACSIS), 2014 International Conference on
Type
conf
DOI
10.1109/ICACSIS.2014.7065884
Filename
7065884
Link To Document