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Published in: Education and Information Technologies 1/2020

02-08-2019

A robust classification to predict learning styles in adaptive E-learning systems

Authors: Ibtissam Azzi, Adil Jeghal, Abdelhay Radouane, Ali Yahyaouy, Hamid Tairi

Published in: Education and Information Technologies | Issue 1/2020

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Abstract

In E-Learning Systems, the automatic detection of the learners’ learning styles provides a concrete way for instructors to personalize the learning to be made available to learners. The classification techniques are the most used techniques to automatically detect the learning styles by processing data coming from learner interactions with the system. By using these classification techniques, considerable results are obtained by several approaches with various learning style models. The performance of these approaches varies from one approach to another depending on the data used. However, these approaches have some limitations related to robustness. Indeed, a common feature of these approaches is that they consider only a single course in their trials. Whereas to construct a robust classifier, a representative set of data is crucial. Subsequently, a robust approach for automatically detecting learning styles must take into account the wealth of information to be processed. Therefore, it must consider that the data have to be gathered from learners’ learning behaviors that correspond to several courses. In this paper, we propose a robust classifier which can be able to identify the learning style of the learner in E Learning System. The learning behavior of the learner is captured on varied contexts typically on varied courses appertaining to a specific subject matter. The web usage mining is used for capturing the learners’ behaviors and then, the learning styles are mapped to Felder-Silverman Learning Style Model (FSLSM) categories. Fuzzy C Means (FCM) algorithm is used to cluster the captured learning behavioral data into FSLSM categories. The experiment results show the performance of our approach although the captured data are gathered from the learners’ learning behaviors corresponding to several courses.

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Metadata
Title
A robust classification to predict learning styles in adaptive E-learning systems
Authors
Ibtissam Azzi
Adil Jeghal
Abdelhay Radouane
Ali Yahyaouy
Hamid Tairi
Publication date
02-08-2019
Publisher
Springer US
Published in
Education and Information Technologies / Issue 1/2020
Print ISSN: 1360-2357
Electronic ISSN: 1573-7608
DOI
https://doi.org/10.1007/s10639-019-09956-6

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