Uncovering Latent Patterns in Social Media Usage and Mental Health: A Clustering-Based Approach Using Unsupervised Machine Learning
Md All Shahria, Sanjeda Dewan Mithila, Touhid Alam, Mohammad Sakib Mahmood, Mahfuza Khatun

TL;DR
This study employs unsupervised machine learning, specifically clustering, to identify hidden patterns in social media usage and mental health indicators, revealing distinct user profiles and their psychological implications.
Contribution
It introduces a novel clustering-based approach to segment social media users based on behavioral and psychological data, filling a gap in prior research.
Findings
Optimal clustering at 6 groups using the Elbow Method.
Correlation of 0.28 between social media hours and anxiety.
Identification of distinct risk profiles related to mental health.
Abstract
The widespread adoption of social media has heightened interest in its psychological effects, particularly on mental health indicators such as anxiety, depression, loneliness, and sleep quality, as these platforms increasingly influence social interactions and well-being. Although previous research has examined correlations between social media use and mental health, few studies have utilized unsupervised machine learning to segment users based on behavioral and psychological patterns, leaving a gap in identifying distinct risk profiles across diverse groups. This study seeks to address this by segmenting individuals according to their social media usage and psychological well-being, employing clustering to reveal hidden patterns and evaluate their mental health implications. Data from 551 participants, collected via an online survey, were preprocessed using KNN imputation for missing…
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