Harnessing the Power of Hugging Face Transformers for Predicting Mental
Health Disorders in Social Networks
- URL: http://arxiv.org/abs/2306.16891v2
- Date: Fri, 30 Jun 2023 07:45:07 GMT
- Title: Harnessing the Power of Hugging Face Transformers for Predicting Mental
Health Disorders in Social Networks
- Authors: Alireza Pourkeyvan, Ramin Safa, Ali Sorourkhah
- Abstract summary: This study explores how user-generated data can be used to predict mental disorder symptoms.
Our study compares four different BERT models of Hugging Face with standard machine learning techniques.
New models outperform the previous approach with an accuracy rate of up to 97%.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Early diagnosis of mental disorders and intervention can facilitate the
prevention of severe injuries and the improvement of treatment results. Using
social media and pre-trained language models, this study explores how
user-generated data can be used to predict mental disorder symptoms. Our study
compares four different BERT models of Hugging Face with standard machine
learning techniques used in automatic depression diagnosis in recent
literature. The results show that new models outperform the previous approach
with an accuracy rate of up to 97%. Analyzing the results while complementing
past findings, we find that even tiny amounts of data (like users' bio
descriptions) have the potential to predict mental disorders. We conclude that
social media data is an excellent source of mental health screening, and
pre-trained models can effectively automate this critical task.
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