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History and Future of Bayesian Statistics
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 Title & Authors
History and Future of Bayesian Statistics
Lee, Jaeyong; Lee, Kyoungjae; Leea, Youngseon;
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The recent computational revolution of Bayesian statistics has expanded use of the Bayesian statistics significantly; however, Bayesian statistics face a new set of challenges in the era of information technology. We survey the history of Bayesian statistics briefly and its expansion in the modern times. We then take a prospective future view of statistics and list challenges that the statistics community faces.
Bayesian statistics;Thomas Bayes;the future of statistics;
 Cited by
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