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Statistical Matching A Frequentist Theory Practical Applications And Alternative Bayesian Approaches 1st Edition Susanne Rssler Auth

  • SKU: BELL-4271722
Statistical Matching A Frequentist Theory Practical Applications And Alternative Bayesian Approaches 1st Edition Susanne Rssler Auth
$ 31.00 $ 45.00 (-31%)

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Statistical Matching A Frequentist Theory Practical Applications And Alternative Bayesian Approaches 1st Edition Susanne Rssler Auth instant download after payment.

Publisher: Springer-Verlag New York
File Extension: PDF
File size: 5.95 MB
Pages: 264
Author: Susanne Rässler (auth.)
ISBN: 9780387955162, 9781461300533, 038795516X, 1461300533
Language: English
Year: 2002
Edition: 1

Product desciption

Statistical Matching A Frequentist Theory Practical Applications And Alternative Bayesian Approaches 1st Edition Susanne Rssler Auth by Susanne Rässler (auth.) 9780387955162, 9781461300533, 038795516X, 1461300533 instant download after payment.

Data fusion or statistical file matching techniques merge data sets from different survey samples to solve the problem that exists when no single file contains all the variables of interest. Media agencies are merging television and purchasing data, statistical offices match tax information with income surveys. Many traditional applications are known but information about these procedures is often difficult to achieve. The author proposes the use of multiple imputation (MI) techniques using informative prior distributions to overcome the conditional independence assumption. By means of MI sensitivity of the unconditional association of the variables not jointy observed can be displayed. An application of the alternative approaches with real world data concludes the book.

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