Detecting Misinformation: Identifying False News Spread by Political Leaders in the Global South

Valerie Wirtschafter, Frederico Batista Pereira, Natália Bueno, N. Pavão, Jo˜ao Pedro Oliveira dos Santos, Felipe Nunes
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Abstract

We provide and examine an approach for detecting false stories that circulate as text and without hyperlinks, which are commonly found in the Global South. Our text-based approach relies on a combination of false stories identified by fact-checkers, supervised learning methods, natural language processing, and human review. We contrast our approach with the established domain-based and with Facebook’s URL approaches by applying them in the case of Brazilian political leaders. The results show that sharing false news by politicians is a rare event: less than 1% of political leaders’ social media posts contain misinformation. However, we find little overlap across the approaches. The text-based approach leads to different conclusions about which politicians share misinformation and the type of false content shared, while demographic and political predictors of misinformation-sharing behavior are typically similar across approaches. Our approach produces fewer false positives than other approaches and only a small number of false negatives. Our results show that the text-based approach is an important complement to the dominant approaches as it is more effective at detecting false news.
检测错误信息:识别全球南部政治领导人散布的假新闻
我们提供并研究了一种检测虚假报道的方法,这些报道以文本形式传播,没有超链接,在全球南部地区很常见。我们基于文本的方法将事实核查人员识别出的虚假故事、监督学习方法、自然语言处理和人工审核结合在一起。通过将我们的方法应用于巴西政治领导人的案例,我们将其与现有的基于域的方法和 Facebook 的 URL 方法进行了对比。结果表明,政治家分享虚假新闻的情况很少发生:政治领导人的社交媒体帖子中包含错误信息的不到 1%。然而,我们发现这些方法之间几乎没有重叠。基于文本的方法对哪些政治家分享虚假信息以及分享的虚假内容类型得出了不同的结论,而不同方法对虚假信息分享行为的人口和政治预测因素通常是相似的。与其他方法相比,我们的方法产生的误报较少,只有少量的误报。我们的结果表明,基于文本的方法是对主流方法的重要补充,因为它能更有效地检测虚假新闻。
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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