CLMay 26, 2017

Detecting and Explaining Crisis

arXiv:1705.09585v129 citations
Originality Incremental advance
AI Analysis

This work addresses the need for interpretable crisis detection to enhance applications in mental health support, though it appears incremental in method development.

The paper tackled the problem of automatically detecting and explaining crisis states from social media text, achieving significant performance improvements over baselines for both detection and explanation tasks.

Individuals on social media may reveal themselves to be in various states of crisis (e.g. suicide, self-harm, abuse, or eating disorders). Detecting crisis from social media text automatically and accurately can have profound consequences. However, detecting a general state of crisis without explaining why has limited applications. An explanation in this context is a coherent, concise subset of the text that rationalizes the crisis detection. We explore several methods to detect and explain crisis using a combination of neural and non-neural techniques. We evaluate these techniques on a unique data set obtained from Koko, an anonymous emotional support network available through various messaging applications. We annotate a small subset of the samples labeled with crisis with corresponding explanations. Our best technique significantly outperforms the baseline for detection and explanation.

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