Quantifying Mental Health from Social Media with Neural User Embeddings
Silvio Amir, Glen Coppersmith, Paula Carvalho, M\'ario J. Silva, Byron, C. Wallace

TL;DR
This paper introduces a neural user embedding approach to estimate mental health status from social media data, enabling near real-time, scalable assessments that could improve public health monitoring.
Contribution
It presents a novel user embedding model that encodes mental health-related information from social media post histories, improving prediction of mental health conditions.
Findings
Embeddings capture homophilic relations related to mental health
User embeddings are predictive of depression and PTSD
Model demonstrates potential for real-time mental health monitoring
Abstract
Mental illnesses adversely affect a significant proportion of the population worldwide. However, the methods traditionally used for estimating and characterizing the prevalence of mental health conditions are time-consuming and expensive. Consequently, best-available estimates concerning the prevalence of mental health conditions are often years out of date. Automated approaches to supplement these survey methods with broad, aggregated information derived from social media content provides a potential means for near real-time estimates at scale. These may, in turn, provide grist for supporting, evaluating and iteratively improving upon public health programs and interventions. We propose a novel model for automated mental health status quantification that incorporates user embeddings. This builds upon recent work exploring representation learning methods that induce embeddings by…
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Taxonomy
TopicsMental Health via Writing · Machine Learning in Healthcare · Topic Modeling
