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Title: Robust & Non-Robust Models in Statistics
By (author): Lev B Klebanov, Svetlozar T Rachev, Frank J Fabozzi
ISBN10-13: 1607417685 : 9781607417682
Illustrations: tables & charts
Format: Hardback
Size: 180x260mm
Pages: 317
Weight: .788 Kg.
Published: Nova Science Publishers, Inc (US) - March   2010
List Price: 101.99 Pounds Sterling
Availability: Temporarily Out of Stock, more expected soon 
Subjects: Probability & statistics
In this book the authors consider so-called ill-posed problems and stability in statistics. Ill-posed problems are certain results where arbitrary small changes in the assumptions lead to unpredictable large changes in the conclusions. In a companion problem published by Nova, the authors explain that ill-posed problems are not a mere curiosity in the field of contemporary probability. The same situation holds in statistics. The objective of the authors of this book is to (1)identify statistical problems of this type, (2) find their stable variant, and (3)propose alternative versions of numerous theorems in mathematical statistics. The layout of the book is as follows. The authors begin by reviewing the central pre-limit theorem, providing a careful definition and characterisation of the limiting distributions. Then, they consider pre-limiting behaviour of extreme order statistics and the connection of this theory to survival analysis. A study of statistical applications of the pre-limit theorems follows. Based on these theorems, the authors develop a correct version of the theory of statistical estimation, and show its connection with the problem of the choice of an appropriate loss function. As It turns out, a loss function should not be chosen arbitrarily. As they explain, the availability of certain mathematical conveniences (including the correctness of the formulation of the problem estimation) leads to rigid restrictions on the choice of the loss function. The questions about the correctness of incorrectness of certain statistical problems may be resolved through appropriate choice of the loss function and/or metric on the space of random variables and their characteristics (including distribution functions, characteristic functions, and densities). Some auxiliary results from the theory of generalised functions are provided in an appendix.
Table of Contents:
Preface; Ill-posed problems; Loss functions and the restrictions imposed on the model; Loss functions and the theory of unbiased estimation; Sufficient statistics; Parametric inference; Trimmed, Bayes, and admissible estimators; Characterization of Distributions and Intensively Monotone Operators; Robustness of Statistical Models; Entire function of nite exponential type and estimation of density function; N-Metrics in the Set of Probability Measures; Some Statistical Tests Based on N-Distances; Index.
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