scispace - formally typeset
Open AccessProceedings Article

Predicting Depression via Social Media

Munmun De Choudhury, +3 more
- Vol. 7, Iss: 1, pp 128-137
Reads0
Chats0
TLDR
It is found that social media contains useful signals for characterizing the onset of depression in individuals, as measured through decrease in social activity, raised negative affect, highly clustered egonetworks, heightened relational and medicinal concerns, and greater expression of religious involvement.
Abstract
Major depression constitutes a serious challenge in personal and public health. Tens of millions of people each year suffer from depression and only a fraction receives adequate treatment. We explore the potential to use social media to detect and diagnose major depressive disorder in individuals. We first employ crowdsourcing to compile a set of Twitter users who report being diagnosed with clinical depression, based on a standard psychometric instrument. Through their social media postings over a year preceding the onset of depression, we measure behavioral attributes relating to social engagement, emotion, language and linguistic styles, ego network, and mentions of antidepressant medications. We leverage these behavioral cues, to build a statistical classifier that provides estimates of the risk of depression, before the reported onset. We find that social media contains useful signals for characterizing the onset of depression in individuals, as measured through decrease in social activity, raised negative affect, highly clustered egonetworks, heightened relational and medicinal concerns, and greater expression of religious involvement. We believe our findings and methods may be useful in developing tools for identifying the onset of major depression, for use by healthcare agencies; or on behalf of individuals, enabling those suffering from depression to be more proactive about their mental health.

read more

Content maybe subject to copyright    Report

Citations
More filters
Journal ArticleDOI

An analysis of mental health of social media users using unsupervised approach

TL;DR: This study analyzed posts and tweets from the social media platform namely Twitter and developed an unsupervised model to classify users based on the scale of change in their behavior, which has achieved 76.12% accuracy.
Journal ArticleDOI

The development of an emotional regulation scale for adolescents

TL;DR: A provisional scale, measuring emotional regulation strategies used by adolescents, has 39 items, consisting of five emotional regulation strategy categories, named Comfort and Sharing, Antisocial behaviour, Creative Activities, Physical Activities and Eating.
Proceedings ArticleDOI

Does Yoga Make You Happy? Analyzing Twitter User Happiness using Textual and Temporal Information

TL;DR: This study investigates the causal relationship between practicing yoga and being happy by incorporating textual and temporal information of users using Granger causality, and proposes a joint embedding model based on the fusion of neural networks with attention mechanism by leveraging users’ social and textual information.
Proceedings ArticleDOI

Hybrid Feature based Prediction of Suicide Related Activity on Twitter

TL;DR: This research removed casual inactive subjects from online web- based life twitter and communicating self-destructive ideations and utilized n- gram model which is a mix of Unigram, Bigram, and Trigram with half breed word reference for score computation, utilizing the casual points to anticipate the earnestness of the posts using machine learning algorithms.
Proceedings ArticleDOI

Machine Learning Techniques for Depression Analysis on Social Media- Case Study on Bengali Community

TL;DR: In this paper, a study based on depression, tweets, and numerous chat app responses, and gathered Bengali data and projected depression posts and commentaries, have been used to evaluate these data and forecast depression and for algorithm purpose Support vector machine, Random Forest, Decision Tree, K-Nearest Neighbors, Naïve Bayes (Multinomial Naive Bayes), Logistic Regression has been used.
References
More filters
Journal ArticleDOI

The CES-D Scale: A Self-Report Depression Scale for Research in the General Population

TL;DR: The CES-D scale as discussed by the authors is a short self-report scale designed to measure depressive symptomatology in the general population, which has been used in household interview surveys and in psychiatric settings.
Journal ArticleDOI

The epidemiology of major depressive disorder: results from the National Comorbidity Survey Replication (NCS-R).

TL;DR: Notably, major depressive disorder is a common disorder, widely distributed in the population, and usually associated with substantial symptom severity and role impairment, and while the recent increase in treatment is encouraging, inadequate treatment is a serious concern.
Related Papers (5)