Subconscious Crowdsourcing: A feasible data collection mechanism for mental disorder detection on social media

@article{Chang2016SubconsciousCA,
  title={Subconscious Crowdsourcing: A feasible data collection mechanism for mental disorder detection on social media},
  author={Chun-Hao Chang and Elvis Saravia and Yi-Shin Chen},
  journal={2016 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining (ASONAM)},
  year={2016},
  pages={374-379}
}
Mental disorders are currently affecting millions of people from different cultures, age groups and geographic regions. The challenge of mental disorders is that they are difficult to detect on suffering patients, thus presenting an alarming number of undetected cases and misdiagnosis. In this paper, we aim at building predictive models that leverage language and behavioral patterns, used particularly in social media, to determine whether a user is suffering from two cases of mental disorder… CONTINUE READING

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