Emotion cognizance improves health fake news identification

Anoop Kadan, Deepak P, L. LajishV.
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引用次数: 19

Abstract

Identifying fake news is increasingly being recognized as an important computational task with high potential social impact. Misinformation is routinely injected into almost every domain of news including politics, health, science, business, etc., among which, the fake news in the health domain poses serious risk and harm to health and well-being in modern societies. 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 simple technique that works by leveraging emotion intensity lexicons to develop emotion-amplified 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 notable 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.
情绪认知提高健康假新闻识别
识别假新闻越来越被认为是一项重要的计算任务,具有很高的潜在社会影响。在政治、健康、科学、商业等几乎所有新闻领域,错误信息都是常态化的。其中,健康领域的虚假新闻对现代社会的健康和福祉构成了严重的风险和危害。在本文中,我们考虑新闻文章的情感特征在健康领域假新闻识别中的效用,并提供证据表明情感认知表征明显更适合该任务。我们概述了一种简单的技术,该技术通过利用情感强度词汇来开发情感放大的文本表示,并评估这种表示在各种监督和无监督场景下识别与健康有关的假新闻的效用。我们在一系列技术类型和参数设置上观察到的一致和显着的经验收益建立了新闻文章中情感信息的效用,这是一个经常被忽视的方面,用于健康领域的错误信息识别任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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