Measuring receptivity to misinformation at scale on a social media platform

Christopher K Tokita, Kevin Aslett, William P Godel, Zeve Sanderson, Joshua A Tucker, Jonathan Nagler, Nathaniel Persily, Richard Bonneau
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Abstract

Measuring the impact of online misinformation is challenging. Traditional measures, such as user views or shares on social media, are incomplete because not everyone who is exposed to misinformation is equally likely to believe it. To address this issue, we developed a method that combines survey data with observational Twitter data to probabilistically estimate the number of users both exposed to and likely to believe a specific news story. As a proof of concept, we applied this method to 139 viral news articles and find that although false news reaches an audience with diverse political views, users who are both exposed and receptive to believing false news tend to have more extreme ideologies. These receptive users are also more likely to encounter misinformation earlier than those who are unlikely to believe it. This mismatch between overall user exposure and receptive user exposure underscores the limitation of relying solely on exposure or interaction data to measure the impact of misinformation, as well as the challenge of implementing effective interventions. To demonstrate how our approach can address this challenge, we then conducted data-driven simulations of common interventions used by social media platforms. We find that these interventions are only modestly effective at reducing exposure among users likely to believe misinformation, and their effectiveness quickly diminishes unless implemented soon after misinformation's initial spread. Our paper provides a more precise estimate of misinformation's impact by focusing on the exposure of users likely to believe it, offering insights for effective mitigation strategies on social media.
大规模衡量社交媒体平台对错误信息的接受程度
衡量网络虚假信息的影响具有挑战性。传统的衡量标准,如用户在社交媒体上的浏览量或分享量,是不完整的,因为并非每个接触到错误信息的人都有同样的可能相信它。为了解决这个问题,我们开发了一种方法,将调查数据与 Twitter 观察数据相结合,以概率方式估算出接触到特定新闻报道并有可能相信该新闻报道的用户数量。作为概念验证,我们将这种方法应用于 139 篇病毒性新闻报道,结果发现,虽然虚假新闻的受众具有不同的政治观点,但同时接触到虚假新闻并愿意相信虚假新闻的用户往往具有更极端的意识形态。与那些不太可能相信虚假信息的用户相比,这些容易接受虚假信息的用户也更有可能更早地接触到虚假信息。总体用户曝光率和接受用户曝光率之间的这种不匹配凸显了仅仅依靠曝光或互动数据来衡量错误信息影响的局限性,以及实施有效干预的挑战性。为了展示我们的方法如何应对这一挑战,我们对社交媒体平台常用的干预措施进行了数据驱动模拟。我们发现,这些干预措施对于减少可能相信误导信息的用户的曝光率效果一般,而且除非在误导信息最初传播后很快实施,否则其效果会迅速减弱。我们的论文通过关注可能相信错误信息的用户的曝光率,对错误信息的影响进行了更精确的估计,为社交媒体上有效的缓解策略提供了启示。
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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