Emotion Cognizance Improves Health Fake News Identification
June 25, 2019 Β· Declared Dead Β· π International Database Engineering and Applications Symposium
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Authors
Anoop K, Deepak P, Lajish V L
arXiv ID
1906.10365
Category
cs.SI: Social & Info Networks
Citations
34
Venue
International Database Engineering and Applications Symposium
Last Checked
4 months ago
Abstract
Identifying misinformation is increasingly being recognized as an important computational task with high potential social impact. Misinformation and fake contents are injected into almost every domain of news including politics, health, science, business, etc., among which, the fakeness in health domain pose serious adverse effects to scare or harm the society. Misinformation contains scientific claims or content from social media exaggerated with strong emotion content to attract eyeballs. In this paper, we consider the utility of the affective character of news articles for fake news identification in the health domain and present evidence that emotion cognizant representations are significantly more suited for the task. We outline a technique to leverage emotion intensity lexicons to develop emotionized text representations, and evaluate the utility of such a representation for identifying fake news relating to health in various supervised and unsupervised scenarios. The consistent and significant empirical gains that we observe over a range of technique types and parameter settings establish the utility of the emotional information in news articles, an often overlooked aspect, for the task of misinformation identification in the health domain.
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