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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