Mental Illness Classification on Social Media Texts using Deep Learning
and Transfer Learning
- URL: http://arxiv.org/abs/2207.01012v1
- Date: Sun, 3 Jul 2022 11:33:52 GMT
- Title: Mental Illness Classification on Social Media Texts using Deep Learning
and Transfer Learning
- Authors: Iqra Ameer, Muhammad Arif, Grigori Sidorov, Helena G\`omez-Adorno, and
Alexander Gelbukh
- Abstract summary: According to the World health organization (WHO), approximately 450 million people are affected.
Mental illnesses, such as depression, anxiety, bipolar disorder, ADHD, and PTSD.
This study analyzes unstructured user data on Reddit platform and classifies five common mental illnesses: depression, anxiety, bipolar disorder, ADHD, and PTSD.
- Score: 55.653944436488786
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Given the current social distance restrictions across the world, most
individuals now use social media as their major medium of communication.
Millions of people suffering from mental diseases have been isolated due to
this, and they are unable to get help in person. They have become more reliant
on online venues to express themselves and seek advice on dealing with their
mental disorders. According to the World health organization (WHO),
approximately 450 million people are affected. Mental illnesses, such as
depression, anxiety, etc., are immensely common and have affected an
individuals' physical health. Recently Artificial Intelligence (AI) methods
have been presented to help mental health providers, including psychiatrists
and psychologists, in decision making based on patients' authentic information
(e.g., medical records, behavioral data, social media utilization, etc.). AI
innovations have demonstrated predominant execution in numerous real-world
applications broadening from computer vision to healthcare. This study analyzes
unstructured user data on the Reddit platform and classifies five common mental
illnesses: depression, anxiety, bipolar disorder, ADHD, and PTSD. We trained
traditional machine learning, deep learning, and transfer learning multi-class
models to detect mental disorders of individuals. This effort will benefit the
public health system by automating the detection process and informing
appropriate authorities about people who require emergency assistance.
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