Title of article :
E-Learners’ Activity Categorization Based on Their Learning Styles Using ART Family Neural Network
Author/Authors :
Montazer، Gholam Ali نويسنده , , Khoshniat، Hessam نويسنده MSc student, School of Engineering ,
Issue Information :
فصلنامه با شماره پیاپی 14 سال 2012
Pages :
15
From page :
11
To page :
25
Abstract :
Abstract—Adaptive learning means providing the most appropriate learning materials and strategies considering studentsʹ characteristics. Grouping students based on their learning styles is one of the approaches which has been followed in this area. In this paper, we introduce a mechanism in which learners are divided into some categories according to their behavioral factors and interactions with the system in order to adopt the most appropriate recommendations. In the proposed approach, learnersʹ grouping is done using ART neural network variants including Fuzzy ART, ART 2A, ART 2A-C and ART 2A-E. The clustering task is performed considering some features of learnerʹs behavior chosen based on their learning style. Additionally, these networks identifythe number of studentsʹ categories according to the similarities among their actions during the learning processautomatically. Having employed mentioned methods in a web-based educational system and analyzed their clustering accuracy and performance, we achieved remarkable outcomes as presented in this paper.
Journal title :
International Journal of Information and Communication Technology Research
Serial Year :
2012
Journal title :
International Journal of Information and Communication Technology Research
Record number :
681695
Link To Document :
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