The Matter of Chance : Auditing Web Search Results Related to the 2020 U.S. Presidential Primary Elections Across Six Search Engines

dc.contributor.authorUrman, Aleksandra
dc.contributor.authorMakhortykh, Mykola
dc.contributor.authorUlloa, Roberto
dc.date.accessioned2023-09-19T08:47:52Z
dc.date.available2023-09-19T08:47:52Z
dc.date.issued2022
dc.description.abstractWe examine how six search engines filter and rank information in relation to the queries on the U.S. 2020 presidential primary elections under the default—that is nonpersonalized—conditions. For that, we utilize an algorithmic auditing methodology that uses virtual agents to conduct large-scale analysis of algorithmic information curation in a controlled environment. Specifically, we look at the text search results for “us elections,” “donald trump,” “joe biden,” “bernie sanders” queries on Google, Baidu, Bing, DuckDuckGo, Yahoo, and Yandex, during the 2020 primaries. Our findings indicate substantial differences in the search results between search engines and multiple discrepancies within the results generated for different agents using the same search engine. It highlights that whether users see certain information is decided by chance due to the inherent randomization of search results. We also find that some search engines prioritize different categories of information sources with respect to specific candidates. These observations demonstrate that algorithmic curation of political information can create information inequalities between the search engine users even under nonpersonalized conditions. Such inequalities are particularly troubling considering that search results are highly trusted by the public and can shift the opinions of undecided voters as demonstrated by previous research.
dc.description.versionpublisheddeu
dc.identifier.doi10.1177/08944393211006863
dc.identifier.urihttps://kops.uni-konstanz.de/handle/123456789/67822
dc.language.isoeng
dc.subjectsearch engines
dc.subjectweb search elections
dc.subjectU.S. elections
dc.subjectalgorithmic auditing
dc.subject.ddc320
dc.titleThe Matter of Chance : Auditing Web Search Results Related to the 2020 U.S. Presidential Primary Elections Across Six Search Engineseng
dc.typeJOURNAL_ARTICLE
dspace.entity.typePublication
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@article{Urman2022Matte-67822,
  year={2022},
  doi={10.1177/08944393211006863},
  title={The Matter of Chance : Auditing Web Search Results Related to the 2020 U.S. Presidential Primary Elections Across Six Search Engines},
  number={5},
  volume={40},
  issn={0894-4393},
  journal={Social Science Computer Review},
  pages={1323--1339},
  author={Urman, Aleksandra and Makhortykh, Mykola and Ulloa, Roberto}
}
kops.citation.iso690URMAN, Aleksandra, Mykola MAKHORTYKH, Roberto ULLOA, 2022. The Matter of Chance : Auditing Web Search Results Related to the 2020 U.S. Presidential Primary Elections Across Six Search Engines. In: Social Science Computer Review. Sage. 2022, 40(5), pp. 1323-1339. ISSN 0894-4393. eISSN 1552-8286. Available under: doi: 10.1177/08944393211006863deu
kops.citation.iso690URMAN, Aleksandra, Mykola MAKHORTYKH, Roberto ULLOA, 2022. The Matter of Chance : Auditing Web Search Results Related to the 2020 U.S. Presidential Primary Elections Across Six Search Engines. In: Social Science Computer Review. Sage. 2022, 40(5), pp. 1323-1339. ISSN 0894-4393. eISSN 1552-8286. Available under: doi: 10.1177/08944393211006863eng
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