• Login
    • University Home
    • Library Home
    • Lib Catalogue
    • Advance Search
    View Item 
    •   KDU-Repository Home
    • INTERNATIONAL RESEARCH CONFERENCE ARTICLES (KDU IRC)
    • 2023 IRC Articles
    • Computing
    • View Item
    •   KDU-Repository Home
    • INTERNATIONAL RESEARCH CONFERENCE ARTICLES (KDU IRC)
    • 2023 IRC Articles
    • Computing
    • View Item
    JavaScript is disabled for your browser. Some features of this site may not work without it.

    Integrated Model for Identifying the Learning Style of the Students Using Machine Learning Techniques: An Approach of Felder Silverman Learning Style Model (FSLSM)

    Thumbnail
    View/Open
    FOC_IRC2023_Proceeding-Book-87-93.pdf (408.8Kb)
    Date
    2023-09
    Author
    Wanniarachchi, WAAM
    Premadasa, HK
    Metadata
    Show full item record
    Abstract
    Identifying students’ learning behaviours in learning environments is an essential factor in the success of the lifelong learning process. The intention of the research is to propose a methodology for identifying the learning style of the students in the online learning environment using machine learning techniques. The Felder Silverman learning style model (FSLSM) was used as the learning style identification model, and Moodle was used as the online learning platform. Data was collected for two modules that each module consisting of 150 students who are following BSc, Information Technology Degree of General Sir John Kotelawala Defence University. Once the students enrolled on the courses, their behaviours in the online learning environment were tracked using Moodle logs and the time spent on each activity according to the FSLSM and applied machine. Then the machine learning classification techniques such as Decision Tree, Logistic Regression, Random Forest, Support Vector Machine, and K-Nearest Neighbors were applied to train the several models covering each main four dimensions of the FSLSM. The results show that each dimension of the FSLSM Decision Tree Classifier performed well with an accuracy of 95% for Input,80% for Perception, 90% for Processing and 95% for Understanding, dimensions. The models were evaluated using k-fold cross-validation and Grid search methods and Hyper Parameter Tuning was done accordingly. Moreover, the validity of the models was evaluated by considering the Mean Squared Error (MSE), BIAS and the values of the variance
    URI
    http://ir.kdu.ac.lk/handle/345/7394
    Collections
    • Computing [49]

    Related items

    Showing items related by title, author, creator and subject.

    • Enhancing On-Device learning in IoT Systems through Meta-Learning Techniques: A Comprehensive review 

      Dissanayake, GASSA (2024-09)
      The incorporation of meta-learning approaches to on-device learning for IoT systems has emerged as one of the effective ways of developing intelligent and never-stopping devices capable of learning and adapting on their ...
    • The Beauty Quest: A Cutting-Edge Platform to Manage Customer Relationship in Beauty Culture Industry Using Machine Learning 

      Weerasinghe, WPHN; Vidanagama, DU (2017)
      Intake 34
    • The potential of one-shot learning for drug discovery – A Review 

      Anuradha, K; Lakshan, DPM; Wanniarachchi, WAAM (2022-09)

    Library copyright © 2017  General Sir John Kotelawala Defence University, Sri Lanka
    Contact Us | Send Feedback
     

     

    Browse

    All of KDU RepositoryCommunities & CollectionsBy Issue DateAuthorsTitlesSubjectsFacultyDocument TypeThis CollectionBy Issue DateAuthorsTitlesSubjectsFacultyDocument Type

    My Account

    LoginRegister

    Library copyright © 2017  General Sir John Kotelawala Defence University, Sri Lanka
    Contact Us | Send Feedback