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Making a Case for Social Media Corpus for Detecting Depression

2019-02-02
Adil Rajput, Samara Ahmed

Abstract

The social media platform provides an opportunity to gain valuable insights into user behaviour. Users mimic their internal feelings and emotions in a disinhibited fashion using natural language. Techniques in Natural Language Processing have helped researchers decipher standard documents and cull together inferences from massive amount of data. A representative corpus is a prerequisite for NLP and one of the challenges we face today is the non-standard and noisy language that exists on the internet. Our work focuses on building a corpus from social media that is focused on detecting mental illness. We use depression as a case study and demonstrate the effectiveness of using such a corpus for helping practitioners detect such cases. Our results show a high correlation between our Social Media Corpus and the standard corpus for depression.

Abstract (translated by Google)
URL

http://arxiv.org/abs/1902.00702

PDF

http://arxiv.org/pdf/1902.00702


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