Detection and Classification of mental illnesses on social media using
RoBERTa
- URL: http://arxiv.org/abs/2011.11226v1
- Date: Mon, 23 Nov 2020 05:54:46 GMT
- Title: Detection and Classification of mental illnesses on social media using
RoBERTa
- Authors: Ankit Murarka, Balaji Radhakrishnan, Sushma Ravichandran
- Abstract summary: In this work, we detect and classify five prominent kinds of mental illnesses: depression, anxiety, bipolar disorder, ADHD and PTSD.
We believe that our work is the first multi-class model that uses a Transformer-based architecture such as RoBERTa to analyze people's emotions and psychology.
- Score: 0.3753841394482697
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Given the current social distancing regulations across the world, social
media has become the primary mode of communication for most people. This has
resulted in the isolation of many people suffering from mental illnesses who
are unable to receive assistance in person. They have increasingly turned to
social media to express themselves and to look for guidance in dealing with
their illnesses. Keeping this in mind, we propose a solution to detect and
classify mental illness posts on social media thereby enabling users to seek
appropriate help. In this work, we detect and classify five prominent kinds of
mental illnesses: depression, anxiety, bipolar disorder, ADHD and PTSD by
analyzing unstructured user data on social media platforms. In addition, we are
sharing a new high-quality dataset to drive research on this topic. We believe
that our work is the first multi-class model that uses a Transformer-based
architecture such as RoBERTa to analyze people's emotions and psychology. We
also demonstrate how we stress-test our model using behavioral testing. With
this research, we hope to be able to contribute to the public health system by
automating some of the detection and classification process.
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