Design of experiments for generalized linear models
著者
書誌事項
Design of experiments for generalized linear models
(Interdisciplinary statistics)
CRC Press, c2019
- : hardback
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注記
"A Chapman & Hall book"
Includes bibliographical references (p. 219-221) and index
内容説明・目次
内容説明
Generalized Linear Models (GLMs) allow many statistical analyses to be extended to important statistical distributions other than the Normal distribution. While numerous books exist on how to analyse data using a GLM, little information is available on how to collect the data that are to be analysed in this way.
This is the first book focusing specifically on the design of experiments for GLMs. Much of the research literature on this topic is at a high mathematical level, and without any information on computation. This book explains the motivation behind various techniques, reduces the difficulty of the mathematics, or moves it to one side if it cannot be avoided, and gives examples of how to write and run computer programs using R.
Features
The generalisation of the linear model to GLMs
Background mathematics, and the use of constrained optimisation in R
Coverage of the theory behind the optimality of a design
Individual chapters on designs for data that have Binomial or Poisson distributions
Bayesian experimental design
An online resource contains R programs used in the book
This book is aimed at readers who have done elementary differentiation and understand minimal matrix algebra, and have familiarity with R. It equips professional statisticians to read the research literature. Nonstatisticians will be able to design their own experiments by following the examples and using the programs provided.
目次
1. Generalized Linear Models. 2. Background Material. 3. The Theory Underlying Design. 4. The Binomial Distribution. 5. The Poisson Distribution. 6. Several Other Distributions. 7. Bayesian experimental design
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