Detection and Analysis of Stress-Related Posts in Reddit Acamedic
Communities
- URL: http://arxiv.org/abs/2312.01050v2
- Date: Sat, 2 Mar 2024 21:53:37 GMT
- Title: Detection and Analysis of Stress-Related Posts in Reddit Acamedic
Communities
- Authors: Nazzere Oryngozha and Pakizar Shamoi and Ayan Igali
- Abstract summary: This study focuses on detecting and analyzing stress-related posts in Reddit academic communities.
We classify text as stressed or not using natural language processing and machine learning classifiers.
Key findings reveal that posts and comments in professors Reddit communities are the most stressful.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Nowadays, the significance of monitoring stress levels and recognizing early
signs of mental illness cannot be overstated. Automatic stress detection in
text can proactively help manage stress and protect mental well-being. In
today's digital era, social media platforms reflect the psychological
well-being and stress levels within various communities. This study focuses on
detecting and analyzing stress-related posts in Reddit academic communities.
Due to online education and remote work, these communities have become central
for academic discussions and support. We classify text as stressed or not using
natural language processing and machine learning classifiers, with Dreaddit as
our training dataset, which contains labeled data from Reddit. Next, we collect
and analyze posts from various academic subreddits. We identified that the most
effective individual feature for stress detection is the Bag of Words, paired
with the Logistic Regression classifier, achieving a 77.78% accuracy rate and
an F1 score of 0.79 on the DReaddit dataset. This combination also performs
best in stress detection on human-annotated datasets, with a 72% accuracy rate.
Our key findings reveal that posts and comments in professors Reddit
communities are the most stressful, compared to other academic levels,
including bachelor, graduate, and Ph.D. students. This research contributes to
our understanding of the stress levels within academic communities. It can help
academic institutions and online communities develop measures and interventions
to address this issue effectively.
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