Authors: Stephen C. Loftus
Categories: Mathematics
Publisher: Academic Press
Published Date: 2024-12-02
Language: en
Description: As Bayesian techniques become more common across a variety of fields, it becomes important for experts in those fields to understand those methods. An Introductory Handbook of Bayesian Thinking brings Bayesian thinking and methods to a wide audience beyond the mathematical sciences. Appropriate for students with some background in calculus and introductory statistics as well as for non-statisticians with sufficient mathematical background, the text uses a specific methodology to illustrate Bayesian ideas. Focusing on in the first half, the book builds up the basic rules of probability and random variables. From there, this valuable introduction transition to the idea of likelihoods and switching to the Bayesian paradigm of thinking. The second half of the text focuses on Bayesian models for specific situations, including hierarchical models for the mean and precision, regression, binomial/ordinal regression, and more. Throughout, real datasets are used to illustrate the models and their results. Additionally, readers are taught how to code up their models using the statistical software R-a basic introduction of which is provided in an Appendix.