Searching for or reviewing evidence improves crowdworkers’ misinformation judgments and reduces partisan bias

P. Resnick, Aljoharah Alfayez, Jane Im, Eric Gilbert
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引用次数: 1

Abstract

Can crowd workers be trusted to judge whether news-like articles circulating on the Internet are misleading, or does partisanship and inexperience get in the way? And can the task be structured in a way that reduces partisanship? We assembled pools of both liberal and conservative crowd raters and tested three ways of asking them to make judgments about 374 articles. In a no research condition, they were just asked to view the article and then render a judgment. In an individual research condition, they were also asked to search for corroborating evidence and provide a link to the best evidence they found. In a collective research condition, they were not asked to search, but instead to review links collected from workers in the individual research condition. Both research conditions reduced partisan disagreement in judgments. The individual research condition was most effective at producing alignment with journalists’ assessments. In this condition, the judgments of a panel of sixteen or more crowd workers were better than that of a panel of three expert journalists, as measured by alignment with a held out journalist’s ratings.
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搜索或审查证据可以提高众包工作者对错误信息的判断,减少党派偏见
大众工作者是否可以被信任来判断互联网上流传的类似新闻的文章是否具有误导性,或者是党派偏见和经验不足阻碍了这种判断?这项任务能否以一种减少党派偏见的方式进行?我们集合了自由派和保守派的人群评分者,并测试了三种方法,让他们对374篇文章做出判断。在无研究条件下,他们只被要求浏览文章,然后做出判断。在一个单独的研究条件下,他们还被要求寻找确凿的证据,并提供他们发现的最佳证据的链接。在集体研究条件下,他们没有被要求搜索,而是审查从个人研究条件下的工人那里收集的链接。这两项研究都减少了判断中的党派分歧。个人研究条件在与记者的评估一致方面是最有效的。在这种情况下,一个由16个或更多的群众工作者组成的小组的判断比一个由3个专家记者组成的小组的判断要好,这是通过与一个持牌记者的评级的一致性来衡量的。
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