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An investigation of biases in web search engine query suggestions

机译:网络搜索引擎查询建议中偏差调查

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Purpose Survey-based studies suggest that search engines are trusted more than social media or even traditional news, although cases of false information or defamation are known. The purpose of this paper is to analyze query suggestion features of three search engines to see if these features introduce some bias into the query and search process that might compromise this trust. The authors test the approach on person-related search suggestions by querying the names of politicians from the German Bundestag before the German federal election of 2017. Design/methodology/approach This study introduces a framework to systematically examine and automatically analyze the varieties in different query suggestions for person names offered by major search engines. To test the framework, the authors collected data from the Google, Bing and DuckDuckGo query suggestion APIs over a period of four months for 629 different names of German politicians. The suggestions were clustered and statistically analyzed with regards to different biases, like gender, party or age and with regards to the stability of the suggestions over time. Findings By using the framework, the authors located three semantic clusters within the data set: suggestions related to politics and economics, location information and personal and other miscellaneous topics. Among other effects, the results of the analysis show a small bias in the form that male politicians receive slightly fewer suggestions on "personal and misc" topics. The stability analysis of the suggested terms over time shows that some suggestions are prevalent most of the time, while other suggestions fluctuate more often. Originality/value This study proposes a novel framework to automatically identify biases in web search engine query suggestions for person-related searches. Applying this framework on a set of person-related query suggestions shows first insights into the influence search engines can have on the query process of users that seek out information on politicians.
机译:目的的调查研究表明,搜索引擎是信任的,而不是社交媒体甚至传统新闻,尽管众所周知是虚假信息或诽谤的情况。本文的目的是分析三个搜索引擎的查询建议功能,以了解这些功能是否将一些偏差引入查询和搜索过程,这可能会损害此信任。作者通过查询德国联邦选举之前的德国联邦扬声器的政治家名称来测试与人有关的搜索建议的方法。设计/方法/方法本研究介绍了系统检查和自动分析不同查询中的品种的框架主要搜索引擎提供的人员名称的建议。为了测试该框架,作者在德国政客的629个不同名称中收集了谷歌,Bing和DuckduckGo查询建议API的数据。在不同的偏见方面被聚集和统计分析,如性别,派对或年龄以及随着时间的推移的建议的稳定性。使用该框架的调查结果,作者位于数据集中的三个语义集群:与政治和经济学,位置信息和个人和其他杂项有关的建议。在其他效果之外,分析结果表明,男性政治家对“个人和杂项”主题略少的建议略有略低。随着时间的推移所建议的术语的稳定性分析表明,大部分时间内的一些建议是普遍的,而其他建议更频繁地波动。原创性/值本研究提出了一种新颖的框架,用于自动识别Web搜索引擎查询建议的偏差,以获得与人有关的搜索。将此框架应用于一组与众讨论的查询建议,显示了对影响搜索引擎的首先见解,可以对寻求政治家提供信息的用户的查询过程。

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