Ensemble Learning Using Fuzzy Weights to Improve Learning Style Identification for Adapted Instructional Routines

Mobile personalized learning can be achieved by the identification of students’ learning styles; however, this happens with the completion of large questionnaires. This task has been reported as tedious and time-consuming, causing random selection of the questionnaires’ choices, and thus, erroneous...

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Main Authors: Christos Troussas, Akrivi Krouska, Cleo Sgouropoulou, Ioannis Voyiatzis
Format: Article
Language:English
Published: MDPI AG 2020-07-01
Series:Entropy
Subjects:
Online Access:https://www.mdpi.com/1099-4300/22/7/735
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spelling doaj-1597295932914108ab65650a329ff18f2020-11-25T03:48:10ZengMDPI AGEntropy1099-43002020-07-012273573510.3390/e22070735Ensemble Learning Using Fuzzy Weights to Improve Learning Style Identification for Adapted Instructional RoutinesChristos Troussas0Akrivi Krouska1Cleo Sgouropoulou2Ioannis Voyiatzis3Department of Informatics and Computer Engineering, University of West Attica, 12243 Egaleo, GreeceDepartment of Informatics and Computer Engineering, University of West Attica, 12243 Egaleo, GreeceDepartment of Informatics and Computer Engineering, University of West Attica, 12243 Egaleo, GreeceDepartment of Informatics and Computer Engineering, University of West Attica, 12243 Egaleo, GreeceMobile personalized learning can be achieved by the identification of students’ learning styles; however, this happens with the completion of large questionnaires. This task has been reported as tedious and time-consuming, causing random selection of the questionnaires’ choices, and thus, erroneous adaptation to students’ needs, endangering knowledge acquisition. Moreover, mobile environments render the selection of questionnaires’ choices impractical due to confined mobile user interfaces. In view of the above, this paper presents Learnglish, a fully developed mobile language learning system incorporating automatic identification of students’ learning styles according to the Felder-Silverman model (FSLSM) using ensemble classification. In particular, three classifiers, namely SVM, NB and KNN, are combined based on the majority voting rule. The major innovation of this task, apart from the ensemble classification and the mobile learning environment, is that Learnglish takes as input a minimum number of personal (i.e., age and gender) and cognitive characteristics (i.e., prior academic performance categorized using fuzzy weights), and solely four questions pertaining to the FSLSM dimensions, to identify the learning style. Furthermore, Learnglish incorporates adapted instructional routines to create an individualized learning environment based on students’ learning preferences as determined by their style. Learnglish was fully evaluated with very encouraging results.https://www.mdpi.com/1099-4300/22/7/735adaptive instructional routinesautomatic detection of learning styleensemble learningfuzzy weightsmobile learning
collection DOAJ
language English
format Article
sources DOAJ
author Christos Troussas
Akrivi Krouska
Cleo Sgouropoulou
Ioannis Voyiatzis
spellingShingle Christos Troussas
Akrivi Krouska
Cleo Sgouropoulou
Ioannis Voyiatzis
Ensemble Learning Using Fuzzy Weights to Improve Learning Style Identification for Adapted Instructional Routines
Entropy
adaptive instructional routines
automatic detection of learning style
ensemble learning
fuzzy weights
mobile learning
author_facet Christos Troussas
Akrivi Krouska
Cleo Sgouropoulou
Ioannis Voyiatzis
author_sort Christos Troussas
title Ensemble Learning Using Fuzzy Weights to Improve Learning Style Identification for Adapted Instructional Routines
title_short Ensemble Learning Using Fuzzy Weights to Improve Learning Style Identification for Adapted Instructional Routines
title_full Ensemble Learning Using Fuzzy Weights to Improve Learning Style Identification for Adapted Instructional Routines
title_fullStr Ensemble Learning Using Fuzzy Weights to Improve Learning Style Identification for Adapted Instructional Routines
title_full_unstemmed Ensemble Learning Using Fuzzy Weights to Improve Learning Style Identification for Adapted Instructional Routines
title_sort ensemble learning using fuzzy weights to improve learning style identification for adapted instructional routines
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2020-07-01
description Mobile personalized learning can be achieved by the identification of students’ learning styles; however, this happens with the completion of large questionnaires. This task has been reported as tedious and time-consuming, causing random selection of the questionnaires’ choices, and thus, erroneous adaptation to students’ needs, endangering knowledge acquisition. Moreover, mobile environments render the selection of questionnaires’ choices impractical due to confined mobile user interfaces. In view of the above, this paper presents Learnglish, a fully developed mobile language learning system incorporating automatic identification of students’ learning styles according to the Felder-Silverman model (FSLSM) using ensemble classification. In particular, three classifiers, namely SVM, NB and KNN, are combined based on the majority voting rule. The major innovation of this task, apart from the ensemble classification and the mobile learning environment, is that Learnglish takes as input a minimum number of personal (i.e., age and gender) and cognitive characteristics (i.e., prior academic performance categorized using fuzzy weights), and solely four questions pertaining to the FSLSM dimensions, to identify the learning style. Furthermore, Learnglish incorporates adapted instructional routines to create an individualized learning environment based on students’ learning preferences as determined by their style. Learnglish was fully evaluated with very encouraging results.
topic adaptive instructional routines
automatic detection of learning style
ensemble learning
fuzzy weights
mobile learning
url https://www.mdpi.com/1099-4300/22/7/735
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