
#6 A principled Bayesian workflow, with Michael Betancourt
Learning Bayesian Statistics
00:00
Bayesian vs. Frequentist Methods in Inference
The chapter explores the differences between Bayesian and frequentist approaches in inference, emphasizing the benefits of Bayesian methodology in quantifying uncertainty probabilistically and simplifying computations. It discusses the challenges and advantages of each method, highlighting the importance of accurate computation, prior distributions, and domain expertise in Bayesian modeling. The speaker discusses the prevalence and acceptance of Bayesian methods in academia and industry, showcasing the differences in adoption rates and challenges faced in various fields.
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Transcript


