The second edition of this practical book equips social science
researchers to apply the latest Bayesian methodologies to their data
analysis problems. It includes new chapters on model uncertainty,
Bayesian variable selection and sparsity, and Bayesian workflow for
statistical modeling. Clearly explaining frequentist and epistemic
probability and prior distributions, the second edition emphasizes use
of the open-source RStan software package. The text covers Hamiltonian
Monte Carlo, Bayesian linear regression and generalized linear models,
model evaluation and comparison, multilevel modeling, models for
continuous and categorical latent variables, missing data, and more.
Concepts are fully illustrated with worked-through examples from
large-scale educational and social science databases, such as the
Program for International Student Assessment and the Early Childhood
Longitudinal Study. Annotated RStan code appears in screened boxes;
the companion website (www.guilford.com/kaplan-materials) provides
data sets and code for the book's examples. New to This Edition
*Utilizes the R interface to Stan--faster and more stable than
previously available Bayesian software--for most of the applications
discussed. *Coverage of Hamiltonian MC; Cromwell’s rule; Jeffreys'
prior; the LKJ prior for correlation matrices; model evaluation and
model comparison, with a critique of the Bayesian information
criterion; variational Bayes as an alternative to Markov chain Monte
Carlo (MCMC) sampling; and other new topics. *Chapters on Bayesian
variable selection and sparsity, model uncertainty and model
averaging, and Bayesian workflow for statistical modeling.
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Produktdetaljer
ISBN
9781462553556
Publisert
2023
Utgave
2. utgave
Utgiver
Vendor
The Guilford Press
Språk
Product language
Engelsk
Format
Product format
Digital bok
Forfatter