Identifying Key Mental Health Topic on Youtube Comments using Non-negative Matrix Factorization

This study addresses the challenge of identifying key mental health topics within YouTube comments, a resource-rich yet underutilized data source for mental health discourse analysis. The research employed Non-Negative Matrix Factorization (NMF) for topic modeling, coupled with sentiment analysis to...

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发表在:2024 IEEE 22nd Student Conference on Research and Development, SCOReD 2024
主要作者: 2-s2.0-85219571902
格式: Conference paper
语言:English
出版: Institute of Electrical and Electronics Engineers Inc. 2024
在线阅读:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85219571902&doi=10.1109%2fSCOReD64708.2024.10872731&partnerID=40&md5=420b93368b2c5f335254697c957a1142
id Nazaruddin A.B.; Teo N.H.I.; Aminordin A.B.
spelling Nazaruddin A.B.; Teo N.H.I.; Aminordin A.B.
2-s2.0-85219571902
Identifying Key Mental Health Topic on Youtube Comments using Non-negative Matrix Factorization
2024
2024 IEEE 22nd Student Conference on Research and Development, SCOReD 2024


10.1109/SCOReD64708.2024.10872731
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85219571902&doi=10.1109%2fSCOReD64708.2024.10872731&partnerID=40&md5=420b93368b2c5f335254697c957a1142
This study addresses the challenge of identifying key mental health topics within YouTube comments, a resource-rich yet underutilized data source for mental health discourse analysis. The research employed Non-Negative Matrix Factorization (NMF) for topic modeling, coupled with sentiment analysis to map out the landscape of mental health discussions. The methodology pivoted around the data science lifecycle, ensuring systematic data collection, preparation, and modeling. A notable deliverable was a dynamic dashboard visualizing the findings through various graphical representations, including bar graphs, pie chart, donut chart and word clouds. The analysis unearthed prevalent themes and sentiments, offering granular insights into public discourse on mental health. The implications of this study are twofold: informing mental health providers about emerging trends and sentiments for more tailored intervention strategies and assisting content creators and platform managers in shaping more impactful communication strategies around mental health topics. The study's findings underscore the value of machine learning techniques, particularly NMF and sentiment analysis, in gleaning actionable insights from large-scale, unstructured social media datasets, thereby advancing the conversation around mental health awareness and support. © 2024 IEEE.
Institute of Electrical and Electronics Engineers Inc.

English
Conference paper

author 2-s2.0-85219571902
spellingShingle 2-s2.0-85219571902
Identifying Key Mental Health Topic on Youtube Comments using Non-negative Matrix Factorization
author_facet 2-s2.0-85219571902
author_sort 2-s2.0-85219571902
title Identifying Key Mental Health Topic on Youtube Comments using Non-negative Matrix Factorization
title_short Identifying Key Mental Health Topic on Youtube Comments using Non-negative Matrix Factorization
title_full Identifying Key Mental Health Topic on Youtube Comments using Non-negative Matrix Factorization
title_fullStr Identifying Key Mental Health Topic on Youtube Comments using Non-negative Matrix Factorization
title_full_unstemmed Identifying Key Mental Health Topic on Youtube Comments using Non-negative Matrix Factorization
title_sort Identifying Key Mental Health Topic on Youtube Comments using Non-negative Matrix Factorization
publishDate 2024
container_title 2024 IEEE 22nd Student Conference on Research and Development, SCOReD 2024
container_volume
container_issue
doi_str_mv 10.1109/SCOReD64708.2024.10872731
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85219571902&doi=10.1109%2fSCOReD64708.2024.10872731&partnerID=40&md5=420b93368b2c5f335254697c957a1142
description This study addresses the challenge of identifying key mental health topics within YouTube comments, a resource-rich yet underutilized data source for mental health discourse analysis. The research employed Non-Negative Matrix Factorization (NMF) for topic modeling, coupled with sentiment analysis to map out the landscape of mental health discussions. The methodology pivoted around the data science lifecycle, ensuring systematic data collection, preparation, and modeling. A notable deliverable was a dynamic dashboard visualizing the findings through various graphical representations, including bar graphs, pie chart, donut chart and word clouds. The analysis unearthed prevalent themes and sentiments, offering granular insights into public discourse on mental health. The implications of this study are twofold: informing mental health providers about emerging trends and sentiments for more tailored intervention strategies and assisting content creators and platform managers in shaping more impactful communication strategies around mental health topics. The study's findings underscore the value of machine learning techniques, particularly NMF and sentiment analysis, in gleaning actionable insights from large-scale, unstructured social media datasets, thereby advancing the conversation around mental health awareness and support. © 2024 IEEE.
publisher Institute of Electrical and Electronics Engineers Inc.
issn
language English
format Conference paper
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