This book is concerned with point estimation in Euclidean sample spaces.The first four chapters deal with exact (small-sample) theory, and their approach and organization parallel those of the companion volume, Testing Statistical Hypotheses (TSH). Optimal estimators are derived according to criteria such as unbiasedness, equivariance, and minimaxity, and the material is organized around these criteria. The principal applications are to exponential and group families, and the systematic discussion of the rich body of (relatively simple)statistical problems that fall under these headings constitutes a second major theme of the book.
Preface to the Second Edition
Preface to the First Edition
List of Tables
List of Figures
List of Examples
Table of Notation
1 Preparations
1 The Problem
2 Measure Theory and Integration
3 Probability Theory
4 Group Families
5 Exponential Families
6 Sufficient Statistics
7 Convex Loss Functions
8 Convergence in Probability and in Law
9 Problems
10 Notes
2 Unbiasedness
1 UMVU Estimators
2 Continuous One- and Two-Sample Problems
3 Discrete Distributions
4 Nonparametric Families
5 The Information Inequality
6 The Multiparameter Case and Other Extensions
7 Problems
8 Notes
3 Equivarianee
1 First Examples
2 The Principle of Equivariance
3 Location-Scale Families
4 Normal Linear Models
5 Random and Mixed Effects Models
6 Exponential Linear Models
7 Finite Population Models
8 Problems
9 Notes
4 Average Risk Optimality
1 Introduction
2 First Examples
3 Single-Prior Bayes
4 Equivariant Bayes
5 Hierarchical Bayes
6 Empirical Bayes
7 Risk Comparisons
8 Problems
9 Notes
5 Minimaxity and Admissibility
1 Minimax Estimation
2 Admissibility and Minimaxity in Exponential Families
3 Admissibility and Minimaxity in Group Families
4 Simultaneous Estimation
5 Shrinkage Estimators in the Normal Case
6 Extensions
7 Admissibility and Complete Classes
8 Problems
9 Notes
6 Asymptotic Optimality
1 Performance Evaluations in Large Samples
2 Asymptotic Efficiency
3 Efficient Likelihood Estimation
4 Likelihood Estimation: Multiple Roots
5 The Multiparameter Case
6 Applications
7 Extensions
8 Asymptotic Efficiency of Bayes Estimators
9 Problems
10 Notes
References
Author Index
Subject Index