• Login
    • University Home
    • Library Home
    • Lib Catalogue
    • Advance Search
    View Item 
    •   IR@KDU Home
    • ACADEMIC JOURNALS
    • KDU Journal of Multidisciplinary Studies
    • Volume 06, Issue 02, 2024
    • View Item
    •   IR@KDU Home
    • ACADEMIC JOURNALS
    • KDU Journal of Multidisciplinary Studies
    • Volume 06, Issue 02, 2024
    • View Item
    JavaScript is disabled for your browser. Some features of this site may not work without it.

    A Clustering Approach to Detect Imposter Syndrome Among Sri Lankan Undergraduates

    Thumbnail
    View/Open
    KJMSVol6issue2-162-167.pdf (155.4Kb)
    Date
    2024-11
    Author
    Brahmana, A
    Metadata
    Show full item record
    Abstract
    Imposter Syndrome is another name for perceived fraudulence, which is characterized by feelings of personal inadequacy and self-doubt that endure despite education, achievement, experience and success. This is not a disease or abnormality, so there is no obvious reason to imposter emotions. Therefore, even if they suffer from imposter syndrome, they are not able to know this. The results of an undergraduate with imposter syndrome may be inappropriate academic choices, the impact on mental health and social isolation. The aim of the present study is to develop a computerized framework based on a data mining strategy to identify the Severity Level of imposter syndrome for Sri Lankan undergraduates. Thus, this research shows whether the person suffers from imposter syndrome as Low or Moderate or High in level. During the model development, a formal questionnaire was developed examining different influencing factors like depression, anxiety, parentification, family expectations, perfectionism, and low trait self-esteem that can affect the imposter syndrome of an undergraduate and was used to collect data from Sri Lankan undergraduates. In this study, five different unsupervised machine learning techniques, namely K-means, K-medoids, Spectral Clustering, Hierarchical Clustering and Gaussian Mixture Model Clustering were used. Clustering was selected as the best approach as it allows to detect patterns and similarities associated with undergraduates linked to imposter syndrome. To calculate the goodness of the clustering algorithms, the Silhouette index and the Calinski-Harabasz index were used. Among these five clustering algorithms, the best result was shown in the three clusters of K-means Hence, the finalized method helps to predict and classify severity levels of imposter syndrome among Sri Lankan Undergraduates into three groups as low, moderate or high. The research found that among 316 data points, 32.28% showed a low level of imposter syndrome, 16.77% displayed a moderate level, and 50.95% exhibited a high level.
    URI
    http://ir.kdu.ac.lk/handle/345/7761
    Collections
    • Volume 06, Issue 02, 2024 [30]

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

     

    Browse

    All of IR@KDUCommunities & 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