6 research outputs found

    Towards Misleading Connection Mining

    Get PDF
    This study introduces a new Natural Language Generation (NLG) task – Unit Claim Identification. The task aims to extract every piece of verifiable information from a headline. The Unit Claim identification has applications in other domains; such as fact-checking where the identification of each verifiable information from a check-worthy statement can lead to an effective fact-check. Moreover, the extracting of the unit claims from headlines can identify a misleading news article, by mapping evidence from contents. For addressing the unit claim identification problem, we outlined a set of guidelines for data annotation, arranged in-house training for the annotators and obtained a small dataset. We explored two potential approaches - 1) Rule-based approach and 2) Deep learning-based approach and compared their performances. Although the performance of the deep learning-based approach was not very effective due to small number of training instances, the rule-based approach shoa promising result in terms of precision (65.85%)

    BaitBuster: A Clickbait Identification Framework

    No full text
    The use of tempting and often misleading headlines (clickbait) to allure readers has become a growing practice nowadays among the media outlets. The widespread use of clickbait risks the reader’s trust in media. In this paper, we present BaitBuster, a browser extension and social bot based framework, that detects clickbaits floating on the web, provides brief explanation behind its decision, and regularly makes users aware of potential clickbaits
    corecore