Semiparametric Theory and Missing Data

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Last edited by MARC Bot
November 30, 2023 | History

Semiparametric Theory and Missing Data

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Missing data arise in almost all scientific disciplines. In many cases, the treatment of missing data in an analysis is carried out in a casual and ad-hoc manner, leading, in many cases, to invalid inference and erroneous conclusions. In the past 20 years or so, there has been a serious attempt to understand the underlying issues and difficulties that come about from missing data and their impact on subsequent analysis. There has been a great deal written on the theory developed for analyzing missing data for finite-dimensional parametric models. This includes an extensive literature on likelihood-based methods and multiple imputation. More recently, there has been increasing interest in semiparametric models which, roughly speaking, are models that include both a parametric and nonparametric component. Such models are popular because estimators in such models are more robust than in traditional parametric models.

The theory of missing data applied to semiparametric models is scattered throughout the literature with no thorough comprehensive treatment of the subject. This book combines much of what is known in regard to the theory of estimation for semiparametric models with missing data in an organized and comprehensive manner. It starts with the study of semiparametric methods when there are no missing data. The description of the theory of estimation for semiparametric models is at a level that is both rigorous and intuitive, relying on geometric ideas to reinforce the intuition and understanding of the theory. These methods are then applied to problems with missing, censored, and coarsened data with the goal of deriving estimators that are as robust and efficient as possible. Anastasios A. Tsiatis is the Drexel Professor of Statistics at North Carolina State University.

His research has focused on developing statistical methods for the design and analysis of clinical trials, censored survival analysis, group sequential methods, surrogate markers, semiparametric methods with missing and censored data and causal inference and has been the major Ph.D. advisor for more than 30 students working in these areas. He is a Fellow of the American Statistical Association and the Institute of Mathematical Statistics. He is the recipient of the Spiegelman Award and the Snedecor Award. He has been an Associate Editor of the Annals of Statistics and Statistics and Probability Letters and is currently an Associate Editor for Biometrika.

Publish Date
Publisher
Springer
Language
English
Pages
383

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Previews available in: English

Edition Availability
Cover of: Semiparametric Theory and Missing Data
Semiparametric Theory and Missing Data
June 21, 2006, Springer
in English

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Book Details


Edition Notes

Springer Series in Statistics

Classifications

Library of Congress
QA276.8 .T75 2006, QA276-280, QA276.8 .T79 2006

ID Numbers

Open Library
OL7445394M
Internet Archive
semiparametricth00tsia_438
ISBN 10
0387324488
ISBN 13
9780387324487
LCCN
2006921164
OCLC/WorldCat
70677376
Library Thing
8335278
Goodreads
2787475

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November 30, 2023 Edited by MARC Bot import existing book
December 30, 2022 Edited by MARC Bot import existing book
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December 17, 2020 Edited by MARC Bot import existing book
April 29, 2008 Created by an anonymous user Imported from amazon.com record