Tree-Based Pipeline Optimization Machine Learning in Classifying Whistleblowing of Academic Misconduct

The critical issue of academic misconduct is of utmost importance in the field of education and understanding whistleblowing behaviour can be a potential measure to effectively address this issue. This paper highlights the benefits of using the Tree-based Pipeline Optimization (TPOT) framework as a...

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Published in:Journal of Advanced Research in Applied Sciences and Engineering Technology
Main Author: Rahman R.A.; Masrom S.; Ahmad J.; Hashim H.; Mutia E.
Format: Article
Language:English
Published: Semarak Ilmu Publishing 2024
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85184422255&doi=10.37934%2faraset.38.2.165175&partnerID=40&md5=a067c1b9537f38f0dc57a2b36124b8da
id 2-s2.0-85184422255
spelling 2-s2.0-85184422255
Rahman R.A.; Masrom S.; Ahmad J.; Hashim H.; Mutia E.
Tree-Based Pipeline Optimization Machine Learning in Classifying Whistleblowing of Academic Misconduct
2024
Journal of Advanced Research in Applied Sciences and Engineering Technology
38
2
10.37934/araset.38.2.165175
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85184422255&doi=10.37934%2faraset.38.2.165175&partnerID=40&md5=a067c1b9537f38f0dc57a2b36124b8da
The critical issue of academic misconduct is of utmost importance in the field of education and understanding whistleblowing behaviour can be a potential measure to effectively address this issue. This paper highlights the benefits of using the Tree-based Pipeline Optimization (TPOT) framework as a user-friendly tool for implementing machine learning techniques in studying whistleblowing behaviour among students in universities in Indonesia and Malaysia. The paper demonstrates the ease of implementing TPOT, making it accessible to inexpert computing scientists, and showcases highly promising results from the whistleblowing classification models trained with TPOT. Performance metrics such as Area Under Curve (AUC) are used to measure the reliability of the TPOT framework, with some models achieving AUC values above 90%, and the best AUC was 99% by TPOT with a Genetic Programming population size of 40. The paper’s main contribution lies in the empirical demonstration and findings that resulted in achieving the optimal outcomes from the whistleblowing case study. This paper sheds light on the potential of TPOT as an easy and rapid implementation tool for AI in the field of education, addressing the challenges of academic misconduct and showcasing promising results in the context of whistleblowing classification. © 2024, Semarak Ilmu Publishing. All rights reserved.
Semarak Ilmu Publishing
24621943
English
Article
All Open Access; Hybrid Gold Open Access
author Rahman R.A.; Masrom S.; Ahmad J.; Hashim H.; Mutia E.
spellingShingle Rahman R.A.; Masrom S.; Ahmad J.; Hashim H.; Mutia E.
Tree-Based Pipeline Optimization Machine Learning in Classifying Whistleblowing of Academic Misconduct
author_facet Rahman R.A.; Masrom S.; Ahmad J.; Hashim H.; Mutia E.
author_sort Rahman R.A.; Masrom S.; Ahmad J.; Hashim H.; Mutia E.
title Tree-Based Pipeline Optimization Machine Learning in Classifying Whistleblowing of Academic Misconduct
title_short Tree-Based Pipeline Optimization Machine Learning in Classifying Whistleblowing of Academic Misconduct
title_full Tree-Based Pipeline Optimization Machine Learning in Classifying Whistleblowing of Academic Misconduct
title_fullStr Tree-Based Pipeline Optimization Machine Learning in Classifying Whistleblowing of Academic Misconduct
title_full_unstemmed Tree-Based Pipeline Optimization Machine Learning in Classifying Whistleblowing of Academic Misconduct
title_sort Tree-Based Pipeline Optimization Machine Learning in Classifying Whistleblowing of Academic Misconduct
publishDate 2024
container_title Journal of Advanced Research in Applied Sciences and Engineering Technology
container_volume 38
container_issue 2
doi_str_mv 10.37934/araset.38.2.165175
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85184422255&doi=10.37934%2faraset.38.2.165175&partnerID=40&md5=a067c1b9537f38f0dc57a2b36124b8da
description The critical issue of academic misconduct is of utmost importance in the field of education and understanding whistleblowing behaviour can be a potential measure to effectively address this issue. This paper highlights the benefits of using the Tree-based Pipeline Optimization (TPOT) framework as a user-friendly tool for implementing machine learning techniques in studying whistleblowing behaviour among students in universities in Indonesia and Malaysia. The paper demonstrates the ease of implementing TPOT, making it accessible to inexpert computing scientists, and showcases highly promising results from the whistleblowing classification models trained with TPOT. Performance metrics such as Area Under Curve (AUC) are used to measure the reliability of the TPOT framework, with some models achieving AUC values above 90%, and the best AUC was 99% by TPOT with a Genetic Programming population size of 40. The paper’s main contribution lies in the empirical demonstration and findings that resulted in achieving the optimal outcomes from the whistleblowing case study. This paper sheds light on the potential of TPOT as an easy and rapid implementation tool for AI in the field of education, addressing the challenges of academic misconduct and showcasing promising results in the context of whistleblowing classification. © 2024, Semarak Ilmu Publishing. All rights reserved.
publisher Semarak Ilmu Publishing
issn 24621943
language English
format Article
accesstype All Open Access; Hybrid Gold Open Access
record_format scopus
collection Scopus
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