Publication | Open Access
Understanding and Discovering Deliberate Self-harm Content in Social Media
62
Citations
40
References
2017
Year
Unknown Venue
Computational Social ScienceSelf-harm Social MediaSocial MediaEngineeringData ScienceSocial ComputingAffective ComputingProblematic Social Medium UseSocial SciencesCommunicationDeliberate Self-harm ContentSelf-harm ContentContent AnalysisSocial Medium DataAggressionPsychologyText MiningSocial Medium Mining
Studies suggest that self-harm users found it easier to discuss self-harm-related thoughts and behaviors using social media than in the physical world. Given the enormous and increasing volume of social media data, on-line self-harm content is likely to be buried rapidly by other normal content. To enable voices of self-harm users to be heard, it is important to distinguish self-harm content from other types of content. In this paper, we aim to understand self-harm content and provide automatic approaches to its detection. We first perform a comprehensive analysis on self-harm social media using different input cues. Our analysis, the first of its kind in large scale, reveals a number of important findings. Then we propose frameworks that incorporate the findings to discover self-harm content under both supervised and unsupervised settings. Our experimental results on a large social media dataset from Flickr demonstrate the effectiveness of the proposed frameworks and the importance of our findings in discovering self-harm content.
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