Parámetros
- 270 páginas
- 10 horas de lectura
Más información sobre el libro
The development and application of Bayesian inferential methods have seen significant growth, largely due to powerful simulation-based algorithms that summarize posterior distributions. Interest in the R programming language for statistical analyses has also increased, as its open-source nature, free availability, and extensive contributor packages make it a preferred choice for statisticians. This text introduces Bayesian modeling through computation using R, starting with fundamental Bayesian concepts illustrated by one and two-parameter inferential problems. It covers computational methods like Laplace's method, rejection sampling, and the SIR algorithm within a random effects model framework. The book also introduces Markov Chain Monte Carlo (MCMC) methods, applied to various Bayesian applications including normal and binary response regression, hierarchical modeling, and robust modeling. R algorithms are utilized for developing Bayesian tests and assessing models via the posterior predictive distribution, along with interfacing R with WinBUGS for MCMC. This resource is ideal for introductory courses on Bayesian methods and for practitioners seeking to enhance their knowledge of R and Bayesian techniques. The second edition features new topics like mixtures of conjugate priors and Zellner’s g priors for model selection in linear regression, along with updated R code illustrations in line with the latest LearnBayes package.
Compra de libros
Bayesian Computation with R, Jim Albert
- Idioma
- Publicado en
- 2007
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- Título
- Bayesian Computation with R
- Idioma
- Inglés
- Autores
- Jim Albert
- Editorial
- Springer
- Publicado en
- 2007
- Formato
- Tapa blanda
- Páginas
- 270
- ISBN10
- 0387713840
- ISBN13
- 9780387713847
- Serie
- Etiquetas
- No ficción, Tecnología & Ingeniería, Ciencia y Matemáticas, Ordenadores & Internet, EE.UU., Matemáticas, Algoritmos, Modelaje, Optimización, Visualización
- Calificación
- 3,35 de 5
- Descripción
- The development and application of Bayesian inferential methods have seen significant growth, largely due to powerful simulation-based algorithms that summarize posterior distributions. Interest in the R programming language for statistical analyses has also increased, as its open-source nature, free availability, and extensive contributor packages make it a preferred choice for statisticians. This text introduces Bayesian modeling through computation using R, starting with fundamental Bayesian concepts illustrated by one and two-parameter inferential problems. It covers computational methods like Laplace's method, rejection sampling, and the SIR algorithm within a random effects model framework. The book also introduces Markov Chain Monte Carlo (MCMC) methods, applied to various Bayesian applications including normal and binary response regression, hierarchical modeling, and robust modeling. R algorithms are utilized for developing Bayesian tests and assessing models via the posterior predictive distribution, along with interfacing R with WinBUGS for MCMC. This resource is ideal for introductory courses on Bayesian methods and for practitioners seeking to enhance their knowledge of R and Bayesian techniques. The second edition features new topics like mixtures of conjugate priors and Zellner’s g priors for model selection in linear regression, along with updated R code illustrations in line with the latest LearnBayes package.
