Authors:
(1) Yagci, Nurce, HAW Hamburg, Germany & [email protected];
(2) Sünkler, Sebastian, HAW Hamburg, Germany & [email protected];
(3) Häußler, Helena, HAW Hamburg, Germany & [email protected];
(4) Lewandowski, Dirk, HAW Hamburg, Germany & [email protected].
Objectives and Research Questions
Conclusion, Research Data, Acknowledgments, and References
This study provides important insights into whether, although Google is by far the most popular search engine, the use of alternatives could benefit users. Our results show that using another or more than one search engine leads to seeing more diverse search results, allowing users to inform themselves more comprehensively. It should be noted that within each search engine's results, the concentration of sources shows that only a few top sources dominate the results, meaning whichever search engine a user chooses to use will shape what sources the information they get to
see comes from.
Research data is available at: https://osf.io/nt3wv/
This work is funded by the German Research Foundation (DFG – Deutsche Forschungsgemeinschaft; Grant No. 460676551).
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