Model-Oriented Design of Experiments (Lecture Notes in Statistics, 209)

Model-Oriented Design of Experiments (Lecture Notes in Statistics, 209)

Model-Oriented Design of Experiments (Lecture Notes in Statistics, 209)

by: Valerii V. Fedorov (Author), Peter Hackl (Author)

Publisher: Springer

Edition: Second Edition 2025

Publication Date: 2024-12-27

Language: English

Print Length: 148 pages

ISBN-10: 1071643010

ISBN-13: 9781071643013

Book Description

This book presents the basic ideas of statistical methods in the design of optimal experiments. This new edition now includes sections on design techniques based on the elemental Fisher information matrices (as opposed to Pearson information/moment matrices), allowing a seamless extension of the design techniques to inferential problems where the shape of distributions is essential for optimal design construction. Topics include designs for nonlinear models, models with random parameters and models with correlated observations, designs for model discrimination and misspecified (contaminated) models, and designs in functional spaces.The authors avoid technical details, assuming a moderate background in calculus, matrix algebra, and statistics. In many places, however, suggestions are made as to how the ideas presented in this book can be extended and elaborated for use in real scientific research and practical engineering problems.

Editorial Reviews

This book presents the basic ideas of statistical methods in the design of optimal experiments. This new edition now includes sections on design techniques based on the elemental Fisher information matrices (as opposed to Pearson information/moment matrices), allowing a seamless extension of the design techniques to inferential problems where the shape of distributions is essential for optimal design construction. Topics include designs for nonlinear models, models with random parameters and models with correlated observations, designs for model discrimination and misspecified (contaminated) models, and designs in functional spaces.The authors avoid technical details, assuming a moderate background in calculus, matrix algebra, and statistics. In many places, however, suggestions are made as to how the ideas presented in this book can be extended and elaborated for use in real scientific research and practical engineering problems.

Amazon Page

电子书代发PDF格式价格10我要求助
未经允许不得转载:Wow! eBook » Model-Oriented Design of Experiments (Lecture Notes in Statistics, 209)