Loading...
Paper Type
ERF
Abstract
With mental health issues on the rise, the need for early diagnosis is especially pivotal to reduce the risk of suicide and disease. Both social media usage and social media content can act as indicators of a user’s mental health status. We posit that through using machine learning feedback, we can assist users in early self-diagnoses and monitor how that feedback affects their social media behavior and their mental health. By providing continuous feedback about users’ mental health, we can encourage users to change their social media habits and seek help from a mental health professional.
Recommended Citation
Swatling, Benjamin; Keith, Mark; and Spruill, Alexandra N., "Improving Mental Health Outcomes through Machine Learning Feedback of Social Media Behavior" (2020). AMCIS 2020 Proceedings. 32.
https://aisel.aisnet.org/amcis2020/healthcare_it/healthcare_it/32
Improving Mental Health Outcomes through Machine Learning Feedback of Social Media Behavior
With mental health issues on the rise, the need for early diagnosis is especially pivotal to reduce the risk of suicide and disease. Both social media usage and social media content can act as indicators of a user’s mental health status. We posit that through using machine learning feedback, we can assist users in early self-diagnoses and monitor how that feedback affects their social media behavior and their mental health. By providing continuous feedback about users’ mental health, we can encourage users to change their social media habits and seek help from a mental health professional.
When commenting on articles, please be friendly, welcoming, respectful and abide by the AIS eLibrary Discussion Thread Code of Conduct posted here.