Analysis of doubly truncated data : an introduction
Author(s)
Bibliographic Information
Analysis of doubly truncated data : an introduction
(Springer Briefs in statistics, . JSS research series in statistics / editors-in-chief,
Springer, c2019
- : pbk
Available at 4 libraries
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Note
"This Springer imprint is published by the registered company Springer Nature Singapore Pte Ltd."--T.p. verso
Includes bibliographical references and index
ISSN for subseries: 2364-0057
Description and Table of Contents
Description
This book introduces readers to statistical methodologies used to analyze doubly truncated data. The first book exclusively dedicated to the topic, it provides likelihood-based methods, Bayesian methods, non-parametric methods, and linear regression methods. These procedures can be used to effectively analyze continuous data, especially survival data arising in biostatistics and economics. Because truncation is a phenomenon that is often encountered in non-experimental studies, the methods presented here can be applied to many branches of science. The book provides R codes for most of the statistical methods, to help readers analyze their data. Given its scope, the book is ideally suited as a textbook for students of statistics, mathematics, econometrics, and other fields.
Table of Contents
Chapter 1: Introduction to double-truncation.- Chapter 2: Parametric inference under special exponential family.- Chapter 3: Parametric inference under location-scale family.- Chapter 4: Bayes inference.- Chapter 5: Nonparametric inference.- Chapter 6: Linear regression.- Appendix A: Data (if German company data are available).- Appendix B: R codes for inference under exponential family.- Appendix C: R codes for inference under location-scale family.- Appendix D: R codes for Bayes inference.- Appendix E: R codes for linear regression.
by "Nielsen BookData"