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E-Book

Basu / Shioya / Park Statistical Inference

The Minimum Distance Approach
1. Auflage 2011
ISBN: 978-1-4200-9966-9
Verlag: Taylor & Francis
Format: PDF
Kopierschutz: Adobe DRM (»Systemvoraussetzungen)

The Minimum Distance Approach

E-Book, Englisch, 429 Seiten

Reihe: Chapman & Hall/CRC Monographs on Statistics & Applied Probability

ISBN: 978-1-4200-9966-9
Verlag: Taylor & Francis
Format: PDF
Kopierschutz: Adobe DRM (»Systemvoraussetzungen)



In many ways, estimation by an appropriate minimum distance method is one of the most natural ideas in statistics. However, there are many different ways of constructing an appropriate distance between the data and the model: the scope of study referred to by "Minimum Distance Estimation" is literally huge. Filling a statistical resource gap, Statistical Inference: The Minimum Distance Approach comprehensively overviews developments in density-based minimum distance inference for independently and identically distributed data. Extensions to other more complex models are also discussed.

Comprehensively covering the basics and applications of minimum distance inference, this book introduces and discusses:

- The estimation and hypothesis testing problems for both discrete and continuous models

- The robustness properties and the structural geometry of the minimum distance methods

- The inlier problem and its possible solutions, and the weighted likelihood estimation problem

- The extension of the minimum distance methodology in interdisciplinary areas, such as neural networks and fuzzy sets, as well as specialized models and problems, including semi-parametric problems, mixture models, grouped data problems, and survival analysis.

Statistical Inference: The Minimum Distance Approach gives a thorough account of density-based minimum distance methods and their use in statistical inference. It covers statistical distances, density-based minimum distance methods, discrete and continuous models, asymptotic distributions, robustness, computational issues, residual adjustment functions, graphical descriptions of robustness, penalized and combined distances, weighted likelihood, and multinomial goodness-of-fit tests. This carefully crafted resource is useful to researchers and scientists within and outside the statistics arena.

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Zielgruppe


Statisticians.

Weitere Infos & Material


Introduction
General Notation

Illustrative Examples
Some Background and Relevant Definitions
Parametric Inference based on the Maximum Likelihood Method
Hypothesis Testing by Likelihood Methods
Statistical Functionals and Influence Function
Outline of the Book

Statistical Distances
Introduction

Distances Based on Distribution Functions
Density-Based Distances
Minimum Hellinger Distance Estimation: Discrete Models

Minimum Distance Estimation Based on Disparities: Discrete Models
Some Examples

Continuous Models
Introduction

Minimum Hellinger Distance Estimation
Estimation of Multivariate Location and Covariance

A General Structure
The Basu-Lindsay Approach for Continuous Data

Examples

Measures of Robustness and Computational Issues
The Residual Adjustment Function

The Graphical Interpretation of Robustness
The Generalized Hellinger Distance

Higher Order Influence Analysis
Higher Order Influence Analysis: Continuous Models
Asymptotic Breakdown Properties

The a-Influence Function

Outlier Stability of Minimum Distance Estimators

Contamination Envelopes

The Iteratively Reweighted Least Squares (IRLS)

The Hypothesis Testing Problem
Disparity Difference Test: Hellinger Distance Case

Disparity Difference Tests in Discrete Models

Disparity Difference Tests: The Continuous Case

Power Breakdown of Disparity Difference Tests
Outlier Stability of Hypothesis Tests

The Two Sample Problem

Techniques for Inlier Modification
Minimum Distance Estimation: Inlier Correction in Small Samples
Penalized Distances

Combined Distances

o-Combined Distances
Coupled Distances

The Inlier-Shrunk Distances

Numerical Simulations and Examples

Weighted Likelihood Estimation
The Discrete Case

The Continuous Case
Examples

Hypothesis Testing

Further Reading

Multinomial Goodness-of-fit Testing
Introduction

Asymptotic Distribution of the Goodness-of-Fit Statistics
Exact Power Comparisons in Small Samples

Choosing a Disparity to Minimize the Correction Terms

Small Sample Comparisons of the Test Statistics

Inlier Modified Statistics

An Application: Kappa Statistics

The Density Power Divergence
The Minimum L2 Distance Estimator
The Minimum Density Power Divergence Estimator
A Related Divergence Measure

The Censored Survival Data Problem
The Normal Mixture Model Problem
Selection of Tuning Parameters

Other Applications of the Density Power Divergence

Other Applications
Censored Data

Minimum Hellinger Distance Methods in Mixture Models
Minimum Distance Estimation Based on Grouped Data

Semiparametric Problems

Other Miscellaneous Topics

Distance Measures in Information and Engineering
Introduction

Entropies and Divergences
Csiszar’s f-Divergence
The Bregman Divergence

Extended f-Divergences

Additional Remarks

Applications to Other Models

Introduction

Preliminaries for Other Models

Neural Networks
Fuzzy Theory

Phase Retrieval
Summary



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