Classification of learning styles using behavioral features and twin support vector machine

Background and Objective:Internet and computer access have created opportunities for e-learning. Easier access to resources and freedom of action for users is one of the benefits of e-learning. However, e-learning is not as attractive and dynamic as traditional or face-to-face instruction, and in th...

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Main Authors: J. Nasiri, A.M. Mir, S. Fatahi
Format: Article
Language:fas
Published: Shahid Rajaee Teacher Training University (SRTTU) 2019-03-01
Series:Fanāvarī-i āmūzish
Subjects:
Online Access:https://jte.sru.ac.ir/article_915_3a591bd6be871bf4c9518061164af934.pdf
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author J. Nasiri
A.M. Mir
S. Fatahi
author_facet J. Nasiri
A.M. Mir
S. Fatahi
author_sort J. Nasiri
collection DOAJ
description Background and Objective:Internet and computer access have created opportunities for e-learning. Easier access to resources and freedom of action for users is one of the benefits of e-learning. However, e-learning is not as attractive and dynamic as traditional or face-to-face instruction, and in these systems the user's condition, such as learning rate and motivation, is not taken into account. Therefore, the developers of e-learning systems can help to solve the problems mentioned in these systems by considering the learning style and design of interactive user relationships. Automated identification of learning style not only increases the attractiveness of e-learning, but also increases the efficiency and motivation of learners in e-learning environments. Research shows that people differ in decision making, problem solving, and learning. Learning style makes people understand a story differently. For example, people with good visual memory prefer to present topics visually rather than orally. Applying a proper teaching method improves the learner's performance in the learning environment. Lack of attention to students' learning style reduces their motivation and interest in studying and engagement in educational courses. Students’ success is one of the prominent goals in the learning environments. In order to achieve this goal, paying attention to students’ learning style is essential. Being aware of students’ learning style helps to design an appropriate education method which improves student’s performance in the learning environments. In this paper, the aim is to create a model for automatic prediction of learning styles. Methods: Therefore, two real datasets collected from an e-learning environment which consists of 202 electrical and computer engineering students. Behavioral features were extracted from users’ interaction with e-learning system and then learning styles were classified using twin support vector machine. Twin support vector machine is an extension of SVM which aims at generating two non-parallel hyperplanes. This classifier is not sensitive to imbalanced datasets and its training speed is fast. Findings: In this study, increasing the attractiveness of e-learning is emphasized and the issue of automatic recognition of students' learning style has been investigated by MBTI model. Two data sets from the interaction of 202 electrical and computer engineering students with the Moodle e-learning system have been collected. The collected data set is very unbalanced, which has a negative effect on the accuracy of the categories. With this in mind, the twin support vector machine uses the least squares as a binder. The distinctive feature of this category is the low sensitivity to data balance and very high speed. The results show that the proposed method, despite the inconsistency of the data, has performed very well in the classification of students' learning style and accurately recognizes 95% of learning styles.Conclusion: Due to the excellent performance of the proposed method, a new component can be added to e-learning systems such as Moodle by identifying the learning style, content and appropriate teaching method for the learner. Future research could also gather more data from an e-learning environment and categorize learning styles with cognitive characteristics from the learner.   ===================================================================================== COPYRIGHTS  ©2019 The author(s). This is an open access article distributed under the terms of the Creative Commons Attribution (CC BY 4.0), which permits unrestricted use, distribution, and reproduction in any medium, as long as the original authors and source are cited. No permission is required from the authors or the publishers.  =====================================================================================
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spelling doaj.art-de91657141d940e492cebcd2e4c9f3b92022-12-21T22:51:49ZfasShahid Rajaee Teacher Training University (SRTTU)Fanāvarī-i āmūzish2008-04412345-54622019-03-0113231632610.22061/jte.2018.3358.1859915Classification of learning styles using behavioral features and twin support vector machineJ. Nasiri0A.M. Mir1S. Fatahi2Department of Computational Linguistics, Information Science Research Department, Iranian Research Institute for Information Science and Technology (IRANDOC), Tehran, IranDepartment of Computer Engineering, Faculty of Electrical and Computer Engineering, North Tehran Branch, Islamic Azad University, Tehran, IranDepartment of Information Systems, Information Technology Research Department, Iranian Research Institute for Information Science and Technology (IRANDOC), Tehran, IranBackground and Objective:Internet and computer access have created opportunities for e-learning. Easier access to resources and freedom of action for users is one of the benefits of e-learning. However, e-learning is not as attractive and dynamic as traditional or face-to-face instruction, and in these systems the user's condition, such as learning rate and motivation, is not taken into account. Therefore, the developers of e-learning systems can help to solve the problems mentioned in these systems by considering the learning style and design of interactive user relationships. Automated identification of learning style not only increases the attractiveness of e-learning, but also increases the efficiency and motivation of learners in e-learning environments. Research shows that people differ in decision making, problem solving, and learning. Learning style makes people understand a story differently. For example, people with good visual memory prefer to present topics visually rather than orally. Applying a proper teaching method improves the learner's performance in the learning environment. Lack of attention to students' learning style reduces their motivation and interest in studying and engagement in educational courses. Students’ success is one of the prominent goals in the learning environments. In order to achieve this goal, paying attention to students’ learning style is essential. Being aware of students’ learning style helps to design an appropriate education method which improves student’s performance in the learning environments. In this paper, the aim is to create a model for automatic prediction of learning styles. Methods: Therefore, two real datasets collected from an e-learning environment which consists of 202 electrical and computer engineering students. Behavioral features were extracted from users’ interaction with e-learning system and then learning styles were classified using twin support vector machine. Twin support vector machine is an extension of SVM which aims at generating two non-parallel hyperplanes. This classifier is not sensitive to imbalanced datasets and its training speed is fast. Findings: In this study, increasing the attractiveness of e-learning is emphasized and the issue of automatic recognition of students' learning style has been investigated by MBTI model. Two data sets from the interaction of 202 electrical and computer engineering students with the Moodle e-learning system have been collected. The collected data set is very unbalanced, which has a negative effect on the accuracy of the categories. With this in mind, the twin support vector machine uses the least squares as a binder. The distinctive feature of this category is the low sensitivity to data balance and very high speed. The results show that the proposed method, despite the inconsistency of the data, has performed very well in the classification of students' learning style and accurately recognizes 95% of learning styles.Conclusion: Due to the excellent performance of the proposed method, a new component can be added to e-learning systems such as Moodle by identifying the learning style, content and appropriate teaching method for the learner. Future research could also gather more data from an e-learning environment and categorize learning styles with cognitive characteristics from the learner.   ===================================================================================== COPYRIGHTS  ©2019 The author(s). This is an open access article distributed under the terms of the Creative Commons Attribution (CC BY 4.0), which permits unrestricted use, distribution, and reproduction in any medium, as long as the original authors and source are cited. No permission is required from the authors or the publishers.  =====================================================================================https://jte.sru.ac.ir/article_915_3a591bd6be871bf4c9518061164af934.pdfe-learninglearning stylesupport vector machinembticlassification
spellingShingle J. Nasiri
A.M. Mir
S. Fatahi
Classification of learning styles using behavioral features and twin support vector machine
Fanāvarī-i āmūzish
e-learning
learning style
support vector machine
mbti
classification
title Classification of learning styles using behavioral features and twin support vector machine
title_full Classification of learning styles using behavioral features and twin support vector machine
title_fullStr Classification of learning styles using behavioral features and twin support vector machine
title_full_unstemmed Classification of learning styles using behavioral features and twin support vector machine
title_short Classification of learning styles using behavioral features and twin support vector machine
title_sort classification of learning styles using behavioral features and twin support vector machine
topic e-learning
learning style
support vector machine
mbti
classification
url https://jte.sru.ac.ir/article_915_3a591bd6be871bf4c9518061164af934.pdf
work_keys_str_mv AT jnasiri classificationoflearningstylesusingbehavioralfeaturesandtwinsupportvectormachine
AT ammir classificationoflearningstylesusingbehavioralfeaturesandtwinsupportvectormachine
AT sfatahi classificationoflearningstylesusingbehavioralfeaturesandtwinsupportvectormachine