Latent class analysis of survey error

"This book concerns the error in data collected using sample surveys, the nature and magnitudes of the errors, their effects on survey estimates, how to model and estimate the errors using a variety of modeling methods, and, finally, how to interpret the estimates and make use of the results in...

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Bibliographic Details
Main Authors: Biemer, Paul P
Corporate Authors: Wiley InterScience Online service
Published:
Literature type: Electronic eBook
Language: English
Series: Wiley series in survey methodology
Subjects:
Online Access: http://onlinelibrary.wiley.com/book/10.1002/9780470891155
Summary: "This book concerns the error in data collected using sample surveys, the nature and magnitudes of the errors, their effects on survey estimates, how to model and estimate the errors using a variety of modeling methods, and, finally, how to interpret the estimates and make use of the results in reducing the error for future surveys. The book focuses on models that are appropriate for categorical data, although there are references to the differences and special problems that arise in the analysis and modeling of error for continuous data. Though the primary modeling method that is described
Carrier Form: 1 online resource (pages.)
Bibliography: Includes bibliographical references (pages 353-368) and index.
ISBN: 9780470891155 (electronic bk.)
0470891157 (electronic bk.)
9780470891148 (electronic bk.)
0470891149 (electronic bk.)
Index Number: QA275
CLC: O241.1
Contents: Frontmatter -- Survey Error Evaluation -- A General Model for Measurement Error -- Response Probability Models for Two Measurements -- Latent Class Models for Evaluating Classification Errors -- Further Aspects of Latent Class Modeling -- Latent Class Models for Special Applications -- Latent Class Models for Panel Data -- Survey Error Evaluation: Past, Present, and Future -- Appendix A: Two-Stage Sampling Formulas -- Appendix B: Loglinear Modeling Essentials -- References -- Index -- Wiley Series in Survey Methodology.