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Fighting misinformation on social media using crowdsourced judgments of news source quality

机译:使用众包新闻源质量判断来消除社交媒体上的错误信息

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摘要

Reducing the spread of misinformation, especially on social media, is a major challenge. We investigate one potential approach: having social media platform algorithms preferentially display content from news sources that users rate as trustworthy. To do so, we ask whether crowdsourced trust ratings can effectively differentiate more versus less reliable sources. We ran two preregistered experiments (n = 1,010 from Mechanical Turk and n = 970 from Lucid) where individuals rated familiarity with, and trust in, 60 news sources from three categories: (i) mainstream media outlets, (ii) hyperpartisan websites, and (iii) websites that produce blatantly false content (“fake news”). Despite substantial partisan differences, we find that laypeople across the political spectrum rated mainstream sources as far more trustworthy than either hyperpartisan or fake news sources. Although this difference was larger for Democrats than Republicans—mostly due to distrust of mainstream sources by Republicans—every mainstream source (with one exception) was rated as more trustworthy than every hyperpartisan or fake news source across both studies when equally weighting ratings of Democrats and Republicans. Furthermore, politically balanced layperson ratings were strongly correlated (r = 0.90) with ratings provided by professional fact-checkers. We also found that, particularly among liberals, individuals higher in cognitive reflection were better able to discern between low- and high-quality sources. Finally, we found that excluding ratings from participants who were not familiar with a given news source dramatically reduced the effectiveness of the crowd. Our findings indicate that having algorithms up-rank content from trusted media outlets may be a promising approach for fighting the spread of misinformation on social media.
机译:减少错误信息的传播,特别是在社交媒体上的传播,是一项重大挑战。我们研究了一种可能的方法:让社交媒体平台算法优先显示用户认为可信赖的新闻来源的内容。为此,我们询问众包信任评级是否可以有效地区分更多来源与不可靠来源。我们进行了两个预注册的实验(Mechanical Turk的n = 1,010,Lucid的n = 970),其中个人对以下三个类别的60个新闻来源进行了熟悉和信任:(i)主流媒体,(ii)超党派网站和(iii)产生明显虚假内容(“假新闻”)的网站。尽管党派之间存在重大分歧,但我们发现,整个政治领域的外行人对主流消息来源的评价都远高于超级党派或虚假新闻消息来源。尽管对于民主党人来说,这种差异要比共和党人大(主要是由于共和党人对主流消息来源的不信任),但在两项研究中,每项主流消息源(除了一个例外)在衡量民主党人和民主党人的收视率时均比所有超党派或假新闻来源更值得信赖。共和党人。此外,政治平衡的外行评分与专业事实检查员提供的评分高度相关(r = 0.90)。我们还发现,尤其是在自由主义者中,具有较高认知反射能力的人能够更好地分辨低质量和高质量来源。最后,我们发现,从不熟悉给定新闻来源的参与者中排除收视率会大大降低人群的效率。我们的发现表明,让算法对来自可信媒体的内容进行排名可能是一种有希望的方法,可以阻止错误信息在社交媒体上的传播。

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