选择性评级:众包新闻评级系统中的党派偏见

IF 2.6 2区 社会学 Q1 COMMUNICATION Journal of Information Technology & Politics Pub Date : 2022-01-17 DOI:10.1080/19331681.2021.1997867
Megan Duncan
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引用次数: 1

摘要

众包新闻评级系统被认为是减少在线受众看到的错误信息数量的一种解决方案。这项研究通过观察评分系统的特征如何影响用户行为,扩展了之前的众包研究。在一个实验(N= 1,021)中,对评分系统的两个参数进行了操作。首先,在“菜单”上向用户展示了不同种类的新闻品牌,并要求他们进行评分。第二,一半的人是强制性的,另一半是自愿的。结果表明,当他们看到意识形态不同的新闻菜单时,他们对新闻品牌的评价要高于与自己意识形态相符的新闻菜单。此外,当参与者有选择参与而不是被迫参与时,主流新闻菜单的可信度评级下降。这些结果对于理解用户如何参与众包新闻可信度具有重要意义。
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Selective rating: partisan bias in crowdsourced news rating systems
ABSTRACT Crowdsourced news rating systems have been suggested as a solution to reducing the amount of misinformation online audiences see. This study expands previous research crowdsourcing by looking at how characteristics of the rating system affect user behavior. In an experiment (N= 1,021), two parameters of the rating system were manipulated. First, users were shown different varieties of news brands on the “menu” they were asked to rate. Second, participation was mandatory for half and voluntary for others. Results indicate partisans rated more news brands when they saw an ideologically dissimilar news menu than one that matched their ideology. Further, the trustworthiness rating of the mainstream news menu decreased when participants had a choice to participate rather than were forced. These results have important implications for understanding how users participate in crowdsourcing news credibility.
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来源期刊
CiteScore
6.60
自引率
7.70%
发文量
31
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