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Search bias quantification: investigating political bias in social media and web search

机译:搜索偏差量化:调查社交媒体和网络搜索中的政治偏差

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摘要

Users frequently use search systems on the Web as well as online social media to learn about ongoing events and public opinion on personalities. Prior studies have shown that the top-ranked results returned by these search engines can shape user opinion about the topic (e.g., event or person) being searched. In case of polarizing topics like politics, where multiple competing perspectives exist, the political bias in the top search results can play a significant role in shaping public opinion towards (or away from) certain perspectives. Given the considerable impact that search bias can have on the user, we propose a generalizable search bias quantification framework that not only measures the political bias in ranked list output by the search system but also decouples the bias introduced by the different sourcesinput data and ranking system. We apply our framework to study the political bias in searches related to 2016 US Presidential primaries in Twitter social media search and find that both input data and ranking system matter in determining the final search output bias seen by the users. And finally, we use the framework to compare the relative bias for two popular search systemsTwitter social media search and Google web searchfor queries related to politicians and political events. We end by discussing some potential solutions to signal the bias in the search results to make the users more aware of them.
机译:用户经常使用Web上的搜索系统以及在线社交媒体来了解正在进行的事件和关于个性的公众舆论。先前的研究表明,这些搜索引擎返回的排名最高的结果可以影响用户对正在搜索的主题(例如事件或人物)的看法。如果存在诸如政治之类的两极分化话题,并且存在多个相互竞争的观点,则排名靠前的搜索结果中的政治偏见可以在塑造公众对(或远离)某些观点的观点方面发挥重要作用。考虑到搜索偏差可能对用户产生的巨大影响,我们提出了一个可概括的搜索偏差量化框架,该框架不仅可以衡量搜索系统输出的排名列表中的政治偏差,还可以消除由不同来源输入数据和排名系统引入的偏差。 。我们应用我们的框架来研究Twitter社交媒体搜索中与2016年美国总统初选有关的搜索中的政治偏见,并发现输入数据和排名系统都对确定用户看到的最终搜索输出偏见至关重要。最后,我们使用该框架比较两个流行搜索系统Twitter社交媒体搜索和Google网络搜索相对于政治人物和政治事件的查询的相对偏差。我们最后讨论了一些可能的解决方案,以表明搜索结果中的偏向,以使用户更加了解它们。

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