Cover image for Partial identification of probability distributions
Title:
Partial identification of probability distributions
Personal Author:
Series:
Springer series in statistics
Publication Information:
New York, NY : Springer, 2003
ISBN:
9780387004549

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30000010119398 QA273.6 M36 2003 Open Access Book Book
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Summary

Summary

Sample data alone never suffice to draw conclusions about populations. Inference always requires assumptions about the population and sampling process. Statistical theory has revealed much about how strength of assumptions affects the precision of point estimates, but has had much less to say about how it affects the identification of population parameters. Indeed, it has been commonplace to think of identification as a binary event - a parameter is either identified or not - and to view point identification as a precondition for inference. Yet there is enormous scope for fruitful inference using data and assumptions that partially identify population parameters. This book explains why and shows how. The book presents in a rigorous and thorough manner the main elements of Charles Manski's research on partial identification of probability distributions. One focus is prediction with missing outcome or covariate data. Another is decomposition of finite mixtures, with application to the analysis of contaminated sampling and ecological inference. A third major focus is the analysis of treatment response. Whatever the particular subject under study, the presentation follows a common path. The author first specifies the sampling process generating the available data and asks what may be learned about population parameters using the empirical evidence alone. He then ask how the (typically) setvalued identification regions for these parameters shrink if various assumptions are imposed. The approach to inference that runs throughout the book is deliberately conservative and thoroughly nonparametric.


Author Notes

Charles F. Manski is Board of Trustees Professor at Northwestern University. He is author of Identification Problems in the Social Sciences and Analog Estimation Methods in Econometrics. He is a Fellow of the American Academy of Arts and Sciences, the American Association for the Advancement of Science, and the Econometric Society.


Table of Contents

Missing Outcomes
Instrumental Variables
Conditional Prediction with Missing Data
Contaminated Outcomes
Regressions, Short and Long
Response-Based Sampling
Analysis of Treatment Response
Monotone Treatment Response
Monotone Instrumental Variables
The Mixing Problem