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Uncovering Relationships using Bayesian Networks: A Case Study on Conspiracy Theories

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Author
Vomlel, JiříORCiD Profile - 0000-0001-5810-4038WoS Profile - IZP-7939-2023Scopus Profile - 6603455425
Kuběna, AlešORCiD Profile - 0000-0002-9599-8277WoS Profile - A-3766-2015Scopus Profile - 15136086900
Šmíd, MartinORCiD Profile - 0000-0003-1140-3510WoS Profile - I-8828-2012Scopus Profile - 7006398520
Weinerová, Josefína
Kwisthout, Johan
Renoij, Silja

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Publication date
2024
Published in
Probabilistic Graphical Models
Publisher / Publication place
Proceedings of Machine Learning Research (Nijmegen)
Volume / Issue
246
ISBN / ISSN
ISBN: 0-000-00000-0eISSN: 2640-3498
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  • Faculty of Arts
  • Faculty of Mathematics and Physics
  • Faculty of Pharmacy in Hradec Králové
Abstract
Bayesian networks (BNs) represent a probabilistic model that can visualize relationships between variables. We apply various BN structure learning algorithms to a large dataset from a Czech university entrance exam. This dataset includes a test of active, open-minded thinking designed by Jonathan Baron, as well as a test of students' attitudes toward various conspiracies. Using BNs, we were able to identify the structure of the conspiracies and their relationships with active open-minded thinking. We also compared results of different BN structure learning algorithms with results of selected standard data analysis methods.
Keywords
Bayesian Networks, Data Analysis, Structural Learning of Bayesian Networks, Actively Open-minded Thinking, Conspiracy Theories
Permanent link
https://hdl.handle.net/20.500.14178/2669
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Full text of this result is licensed under: Creative Commons Uveďte původ 4.0 International

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