Bayesian estimation and experimental design in linear regression models /

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Bibliographic Details
Author / Creator:Pilz, Jürgen, 1951-
Imprint:Chichester ; New York : J. Wiley, 1991, c1983.
Description:x, 296 p. ; 26 cm.
Language:English
Series:Wiley series in probability and mathematical statistics
Subject:
Format: Print Book
URL for this record:http://pi.lib.uchicago.edu/1001/cat/bib/1199376
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ISBN:047191732X : $38.65
Notes:Includes bibliographical references ([275]-296) and index.
Description
Summary:Presents a clear treatment of the design and analysis of linear regression experiments in the presence of prior knowledge about the model parameters. Develops a unified approach to estimation and design; provides a Bayesian alternative to the least squares estimator; and indicates methods for the construction of optimal designs for the Bayes estimator. Material is also applicable to some well-known estimators using prior knowledge that is not available in the form of a prior distribution for the model parameters; such as mixed linear, minimax linear and ridge-type estimators.
Physical Description:x, 296 p. ; 26 cm.
Bibliography:Includes bibliographical references ([275]-296) and index.
ISBN:047191732X