Towards an implementation of instance-based classifiers in pedagogical environment

Monitoring individual student academic performance is indispensable to educational institutes since they are required to provide evidence of their students' academic performance to diverse governmental bureaus. Machine learning classifiers appear productive tools for this purpose; however, inst...

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Main Authors: KHAN I., AHMAD A.R., JABEUR N., MAHDI M.N.
Other Authors: 58061521900
Format: Article
Published: Taylor's University 2023
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Institution: Universiti Tenaga Nasional
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spelling my.uniten.dspace-259612023-05-29T17:05:48Z Towards an implementation of instance-based classifiers in pedagogical environment KHAN I. AHMAD A.R. JABEUR N. MAHDI M.N. 58061521900 35589598800 6505727698 56727803900 Monitoring individual student academic performance is indispensable to educational institutes since they are required to provide evidence of their students' academic performance to diverse governmental bureaus. Machine learning classifiers appear productive tools for this purpose; however, instance-based machine learning classifiers have acquired the least consideration. This research measures the suitability of instance-based classifiers, exclusively k-Nearest Neighbours (k-NN) and Locally Weighted Learning (LWL), in the pedagogical environment and proposes solutions to issues related to this class of classifiers. The performance of these classifiers depends upon the number of nearest neighbours (k) and the distance metrics. We performed experiments, with varying values of k and different distance metrics, to evaluate the performance of k-NN and LWL. To authenticate the conclusions drawn from these experiments, we carried out experimental evaluation with 3 more datasets taken from another research. This comparison evidences the suitability of instance-based classifiers, in pedagogical environment, especially LWL which is one of the least addressed classifiers. The comparative analysis highlights the fact that varying value of k and changing the distance metric optimistically affect the classifier's performance. Even though Manhattan distance metric dominates in achieving higher accuracy; however, classifiers may act differently for dissimilar datasets. To resolve this shortfall, we propose a novel framework which carries out extensive experiments with varying value of k and changing distance metrics and conclude a prediction model which emerges appropriate for the provided training dataset. The framework takes training dataset from an instructor and recommends suitable instance-based learning prediction model. � 2021 Taylor's University. All rights reserved. Final 2023-05-29T09:05:48Z 2023-05-29T09:05:48Z 2021 Article 2-s2.0-85117209388 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85117209388&partnerID=40&md5=9e21758186a1b5782b4ed5df86efd00c https://irepository.uniten.edu.my/handle/123456789/25961 16 5 3757 3771 Taylor's University Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
description Monitoring individual student academic performance is indispensable to educational institutes since they are required to provide evidence of their students' academic performance to diverse governmental bureaus. Machine learning classifiers appear productive tools for this purpose; however, instance-based machine learning classifiers have acquired the least consideration. This research measures the suitability of instance-based classifiers, exclusively k-Nearest Neighbours (k-NN) and Locally Weighted Learning (LWL), in the pedagogical environment and proposes solutions to issues related to this class of classifiers. The performance of these classifiers depends upon the number of nearest neighbours (k) and the distance metrics. We performed experiments, with varying values of k and different distance metrics, to evaluate the performance of k-NN and LWL. To authenticate the conclusions drawn from these experiments, we carried out experimental evaluation with 3 more datasets taken from another research. This comparison evidences the suitability of instance-based classifiers, in pedagogical environment, especially LWL which is one of the least addressed classifiers. The comparative analysis highlights the fact that varying value of k and changing the distance metric optimistically affect the classifier's performance. Even though Manhattan distance metric dominates in achieving higher accuracy; however, classifiers may act differently for dissimilar datasets. To resolve this shortfall, we propose a novel framework which carries out extensive experiments with varying value of k and changing distance metrics and conclude a prediction model which emerges appropriate for the provided training dataset. The framework takes training dataset from an instructor and recommends suitable instance-based learning prediction model. � 2021 Taylor's University. All rights reserved.
author2 58061521900
author_facet 58061521900
KHAN I.
AHMAD A.R.
JABEUR N.
MAHDI M.N.
format Article
author KHAN I.
AHMAD A.R.
JABEUR N.
MAHDI M.N.
spellingShingle KHAN I.
AHMAD A.R.
JABEUR N.
MAHDI M.N.
Towards an implementation of instance-based classifiers in pedagogical environment
author_sort KHAN I.
title Towards an implementation of instance-based classifiers in pedagogical environment
title_short Towards an implementation of instance-based classifiers in pedagogical environment
title_full Towards an implementation of instance-based classifiers in pedagogical environment
title_fullStr Towards an implementation of instance-based classifiers in pedagogical environment
title_full_unstemmed Towards an implementation of instance-based classifiers in pedagogical environment
title_sort towards an implementation of instance-based classifiers in pedagogical environment
publisher Taylor's University
publishDate 2023
_version_ 1806428300188319744