We report on a comparative style analysis of hyperpartisan (extremely one-sided) news and fake news. A corpus of 1,627 articles from 9 political publishers, three each from the mainstream, the hyperpartisan left, and the hyperpartisan right, have been fact-checked by professional journalists at BuzzFeed: 97% of the 299 fake news articles identified are also hyperpartisan. We show how a style analysis can distinguish hyperpartisan news from the mainstream (F-1 = 0.78), and satire from both (F-1 = 0.81). But stylometry is no silver bullet as style-based fake news detection does not work (F-1 = 0.46). We further reveal that left-wing and right-wing news share significantly more stylistic similarities than either does with the mainstream. This result is robust: it has been confirmed by three different modeling approaches, one of which employs Unmasking in a novel way. Applications of our results include partisanship detection and pre-screening for semi-automatic fake news detection.
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Univ Alabama, Dept Commun Studies, Reese Phifer 203,Box 870172, Tuscaloosa, AL 35401 USAUniv Alabama, Dept Commun Studies, Reese Phifer 203,Box 870172, Tuscaloosa, AL 35401 USA
Peacock, Cynthia
Hoewe, Jennifer
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Purdue Univ, Brian Lamb Sch Commun, W Lafayette, IN 47907 USAUniv Alabama, Dept Commun Studies, Reese Phifer 203,Box 870172, Tuscaloosa, AL 35401 USA
Hoewe, Jennifer
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Panek, Elliot
Willis, G. Paul
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Univ Alabama, Coll Commun & Informat Sci, Tuscaloosa, AL USAUniv Alabama, Dept Commun Studies, Reese Phifer 203,Box 870172, Tuscaloosa, AL 35401 USA