Hierarchical Modelling Of Discrete Longitudinal Data


Download Hierarchical Modelling Of Discrete Longitudinal Data PDF/ePub or read online books in Mobi eBooks. Click Download or Read Online button to get Hierarchical Modelling Of Discrete Longitudinal Data book now. This website allows unlimited access to, at the time of writing, more than 1.5 million titles, including hundreds of thousands of titles in various foreign languages.

Download

Models for Discrete Longitudinal Data


Models for Discrete Longitudinal Data

Author: Geert Molenberghs

language: en

Publisher: Springer Science & Business Media

Release Date: 2006-08-30


DOWNLOAD





The linear mixed model has become the main parametric tool for the analysis of continuous longitudinal data, as the authors discussed in their 2000 book. Without putting too much emphasis on software, the book shows how the different approaches can be implemented within the SAS software package. The authors received the American Statistical Association's Excellence in Continuing Education Award based on short courses on longitudinal and incomplete data at the Joint Statistical Meetings of 2002 and 2004.

Hierarchical Modelling of Discrete Longitudinal Data


Hierarchical Modelling of Discrete Longitudinal Data

Author: Leonhard Held

language: en

Publisher: Herbert Utz Verlag

Release Date: 1997


DOWNLOAD





Bayesian Hierarchical Models


Bayesian Hierarchical Models

Author: Peter D. Congdon

language: en

Publisher: CRC Press

Release Date: 2019-09-16


DOWNLOAD





An intermediate-level treatment of Bayesian hierarchical models and their applications, this book demonstrates the advantages of a Bayesian approach to data sets involving inferences for collections of related units or variables, and in methods where parameters can be treated as random collections. Through illustrative data analysis and attention to statistical computing, this book facilitates practical implementation of Bayesian hierarchical methods. The new edition is a revision of the book Applied Bayesian Hierarchical Methods. It maintains a focus on applied modelling and data analysis, but now using entirely R-based Bayesian computing options. It has been updated with a new chapter on regression for causal effects, and one on computing options and strategies. This latter chapter is particularly important, due to recent advances in Bayesian computing and estimation, including the development of rjags and rstan. It also features updates throughout with new examples. The examples exploit and illustrate the broader advantages of the R computing environment, while allowing readers to explore alternative likelihood assumptions, regression structures, and assumptions on prior densities. Features: Provides a comprehensive and accessible overview of applied Bayesian hierarchical modelling Includes many real data examples to illustrate different modelling topics R code (based on rjags, jagsUI, R2OpenBUGS, and rstan) is integrated into the book, emphasizing implementation Software options and coding principles are introduced in new chapter on computing Programs and data sets available on the book’s website