Statistical Inference : The Minimum Distance Approach / by Ayanendranath Basu, Hiroyuki Shioya and Chanseok Park
Material type:
- 9781420099652
- B281 Q1;1
Item type | Current library | Home library | Call number | Status | Barcode | |
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Central Science Library | Central Science Library | B281 Q1;1 (Browse shelf(Opens below)) | Available | SL1558048 |
Includes References 373-402p.and Index 403-409p.
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 modelsThe robustness properties and the structural geometry of the minimum distance methodsThe 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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