sid321axn/fake-news-classifier
This repository contains different machine learning and deep learning approaches for detection of fake news from headlines
This project helps identify misleading 'clickbait' headlines to distinguish between real and fake news. It takes news headlines as input and determines whether each headline is likely to be real or deliberately false. Fact-checkers, journalists, or content moderators who need to quickly assess the veracity of news could use this.
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Use this if you need to automatically screen large volumes of news headlines to flag potentially fake content for further review.
Not ideal if you need to verify the complete article body or require human-level nuance for satire or opinion pieces.
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Last pushed
May 13, 2020
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