Statistical Matching [electronic resource] : A Frequentist Theory, Practical Applications, and Alternative Bayesian Approaches /

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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Main Authors: Rässler, Susanne. author., SpringerLink (Online service)
Format: Texto biblioteca
Language:eng
Published: New York, NY : Springer New York : Imprint: Springer, 2002
Subjects:Statistics., Statistical Theory and Methods.,
Online Access:http://dx.doi.org/10.1007/978-1-4613-0053-3
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spelling KOHA-OAI-TEST:2202822018-07-30T23:57:51ZStatistical Matching [electronic resource] : A Frequentist Theory, Practical Applications, and Alternative Bayesian Approaches / Rässler, Susanne. author. SpringerLink (Online service) textNew York, NY : Springer New York : Imprint: Springer,2002.engData 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.1.1 Statistical Matching — Problems and Perspectives -- 1.2 Record Linkage Versu s Statistical Matching -- 1.3 Statistical Matching as Nonresponse Phenomenon -- 1.4 Identification Problems Inherent in Statistical Matching -- 1.5 Outline of th e Book -- 1.6 Bibliographic and Software Notes -- Frequentist Theory of Statistical Matching -- 2.1 Introduction and Chapters Outline -- 2.2 The Matching Process -- 2.3 Properties of the Matching Process -- 2.4 Matching by Propensity Scores -- 2.5 Obj ectives of Statisti cal Matching -- 2.6 Some Illustrations -- 2.7 Concluding Remarks -- Practical Applications of Statistical Matching -- 3.1 Introduction and Chapters Outline -- 3.2 History of Statistical Matching Techniques -- 3.3 Overview of Traditional Approaches -- Alternative Approaches to Statistical Matching -- 4.1 Introduction and Chapters Outline -- 4.2 Some Basic Notation -- 4.3 Multiple Imputation Inference -- 4.4 Regression Imputation with Random Residuals -- 4.5 Noniterative Multivariate Imputation Procedure -- 4.6 Data Augmentation -- 4.7 Iterative Univariate Imputations by Chained Equ ations -- 4.8 Simulation Study — Multivariate Normal Data -- 4.9 Concluding Remarks -- Empirical Evaluation of Alternative Approaches -- 5.1 Introduction and Chapters Outline -- 5.2 Simulation Study Using Survey Data -- 5.3 Simulation Study Using Generated Data -- 5.4 Design of the Evaluation Study -- 5.5 Results Due to Alternative Approaches -- 5.6 Concluding Remarks -- Synopsis and Outlook -- 6.1 Synopsis -- 6.2 Outlook -- Some Technicalities -- Multivariate Normal Model Completely Observed -- Normally Distributed Data Not Jointly Observed -- Basic S-PLUS Routines -- EVALprio -- EVALd -- NIBAS -- Tables -- References.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.Statistics.Statistics.Statistical Theory and Methods.Springer eBookshttp://dx.doi.org/10.1007/978-1-4613-0053-3URN:ISBN:9781461300533
institution COLPOS
collection Koha
country México
countrycode MX
component Bibliográfico
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En linea
databasecode cat-colpos
tag biblioteca
region America del Norte
libraryname Departamento de documentación y biblioteca de COLPOS
language eng
topic Statistics.
Statistics.
Statistical Theory and Methods.
Statistics.
Statistics.
Statistical Theory and Methods.
spellingShingle Statistics.
Statistics.
Statistical Theory and Methods.
Statistics.
Statistics.
Statistical Theory and Methods.
Rässler, Susanne. author.
SpringerLink (Online service)
Statistical Matching [electronic resource] : A Frequentist Theory, Practical Applications, and Alternative Bayesian Approaches /
description 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.
format Texto
topic_facet Statistics.
Statistics.
Statistical Theory and Methods.
author Rässler, Susanne. author.
SpringerLink (Online service)
author_facet Rässler, Susanne. author.
SpringerLink (Online service)
author_sort Rässler, Susanne. author.
title Statistical Matching [electronic resource] : A Frequentist Theory, Practical Applications, and Alternative Bayesian Approaches /
title_short Statistical Matching [electronic resource] : A Frequentist Theory, Practical Applications, and Alternative Bayesian Approaches /
title_full Statistical Matching [electronic resource] : A Frequentist Theory, Practical Applications, and Alternative Bayesian Approaches /
title_fullStr Statistical Matching [electronic resource] : A Frequentist Theory, Practical Applications, and Alternative Bayesian Approaches /
title_full_unstemmed Statistical Matching [electronic resource] : A Frequentist Theory, Practical Applications, and Alternative Bayesian Approaches /
title_sort statistical matching [electronic resource] : a frequentist theory, practical applications, and alternative bayesian approaches /
publisher New York, NY : Springer New York : Imprint: Springer,
publishDate 2002
url http://dx.doi.org/10.1007/978-1-4613-0053-3
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