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This book is the foremost text on generalized additive mixed models. Presented from both the frequentist and Bayesian perspective using real ecological data, the theory is clearly explained, and the full working code in R is provided so that an analyst can easily employ these methods into their own research.
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A Beginner's Guide to Generalized Additive Mixed Models with R
30 January, 2014, Highland Statistics Ltd
Paperback
in English
- First Edition
0957174152 9780957174153
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"The third in the Highland Statistics' Beginner's Guide series"--Back cover.
Listed as the fourth book of the series "Highland statistics Ltd. book series" on the back cover of Beginner's guide to spatial, temporal and spatial-temporal ecological data analysis with R-INLA.
Contains bibliographical references and indexes.
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A Beginner's Guide to GAMM with R is the third in Highland Statistics' Beginner's Guide series, following the well-received A Beginner's Guide to Generalized Additive Models with R and A Beginner's Guide to GLM and GLMM with R. In this book we take the reader on an exciting voyage into the world of generalized additive mixed effects models (GAMM). Keywords are GAM, mgcv, gamm4, random effects, Poisson and negative binomial GAMM, gamma GAMM, binomial GAMM, NB-P models, GAMMs with generalized extreme value distributions, overdispersion, underdispersion, two-dimensional smoothers, zero-inflated GAMMs, spatial correlation, INLA, Markov chain Monte Carlo techniques, JAGS, and two-way nested GAMMs. The book includes three chapters on the analysis of zero-inflated data. Across the book frequentist approaches (gam, gamm, gamm4, lme4) are compared with Bayesian techniques (MCMC in JAGS and INLA). Datasets on squid, polar bears, coral reefs, ruddy turnstones, parasites in anchovy, common guillemots, harbor porpoises, forestry, brood parasitism, maximum cod length, and Common Scoters are used in case studies. The R code to construct, fit, interpret, and comparatively evaluate models is provided at every stage.
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Feedback?November 19, 2020 | Edited by Kaustubh Chakraborty | Added new book |
November 19, 2020 | Created by Kaustubh Chakraborty | Added new book. |