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Asymptotic Theory of Statistics and Probability / by Anirban DasGupta
(Springer Texts in Statistics)

データ種別 電子ブック
出版情報 New York, NY : Springer New York , 2008
本文言語 英語
大きさ XXVII, 722 p : online resource

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URL 電子ブック


EB0116994

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内容注記 Basic Convergence Concepts and Theorems
Metrics, Information Theory, Convergence, and Poisson Approximations
More General Weak and Strong Laws and the Delta Theorem
Transformations
More General Central Limit Theorems
Moment Convergence and Uniform Integrability
Sample Percentiles and Order Statistics
Sample Extremes
Central Limit Theorems for Dependent Sequences
Central Limit Theorem for Markov Chains
Accuracy of Central Limit Theorems
Invariance Principles
Edgeworth Expansions and Cumulants
Saddlepoint Approximations
U-statistics
Maximum Likelihood Estimates
M Estimates
The Trimmed Mean
Multivariate Location Parameter and Multivariate Medians
Bayes Procedures and Posterior Distributions
Testing Problems
Asymptotic Efficiency in Testing
Some General Large-Deviation Results
Classical Nonparametrics
Two-Sample Problems
Goodness of Fit
Chi-square Tests for Goodness of Fit
Goodness of Fit with Estimated Parameters
The Bootstrap
Jackknife
Permutation Tests
Density Estimation
Mixture Models and Nonparametric Deconvolution
High-Dimensional Inference and False Discovery
A Collection of Inequalities in Probability, Linear Algebra, and Analysis
一般注記 This book is an encyclopedic treatment of classic as well as contemporary large sample theory, dealing with both statistical problems and probabilistic issues and tools. It is written in an extremely lucid style, with an emphasis on the conceptual discussion of the importance of a problem and the impact and relevance of the theorems. The book has 34 chapters over a wide range of topics, nearly 600 exercises for practice and instruction, and another 300 worked out examples. It also includes a large compendium of 300 useful inequalities on probability, linear algebra, and analysis that are collected together from numerous sources, as an invaluable reference for researchers in statistics, probability, and mathematics. It can be used as a graduate text, as a versatile research reference, as a source for independent reading on a wide assembly of topics, and as a window to learning the latest developments in contemporary topics. The book is unique in its detailed coverage of fundamental topics such as central limit theorems in numerous setups, likelihood based methods, goodness of fit, higher order asymptotics, as well as of the most modern topics such as the bootstrap, dependent data, Bayesian asymptotics, nonparametric density estimation, mixture models, and multiple testing and false discovery. It provides extensive bibliographic references on all topics that include very recent publications. Anirban DasGupta is Professor of Statistics at Purdue University. He has also taught at the Wharton School of the University of Pennsylvania, at Cornell University, and at the University of California at San Diego. He has been on the editorial board of the Annals of Statistics since 1998 and has also served on the editorial boards of the Journal of the American Statistical Association, International Statistical Review, and the Journal of Statistical Planning and Inference. He has edited two monographs in the lecture notes monograph series of the Institute of Mathematical Statistics, is a Fellow of the Institute of Mathematical
Statistics and has 70 refereed publications on theoretical statistics and probability in major journals
著者標目 *DasGupta, Anirban author
SpringerLink (Online service)
件 名 LCSH:Mathematics
LCSH:Probabilities
LCSH:Statistics
FREE:Mathematics
FREE:Probability Theory and Stochastic Processes
FREE:Statistical Theory and Methods
分 類 DC23:519.2
巻冊次 ISBN:9780387759715 REFWLINK
ISBN 9780387759715
URL http://dx.doi.org/10.1007/978-0-387-75971-5
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