Computational Statistics

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Computational inference has taken its place alongside asymptotic inference and exact techniques in the standard collection of statistical methods. Computational inference is based on an approach to statistical methods that uses modern computational power to simulate distributional properties of estimators and test statistics. This book describes computationally-intensive statistical methods in a unified presentation, emphasizing techniques, such as the PDF decomposition, that arise in a wide range of methods.

The book assumes an intermediate background in mathematics, computing, and applied and theoretical statistics. The first part of the book, consisting of a single long chapter, reviews this background material while introducing computationally-intensive exploratory data analysis and computational inference.

The six chapters in the second part of the book are on statistical computing. This part describes arithmetic in digital computers and how the nature of digital computations affects algorithms used in statistical methods. Building on the first chapters on numerical computations and algorithm design, the following chapters cover the main areas of statistical numerical analysis, that is, approximation of functions, numerical quadrature, numerical linear algebra, solution of nonlinear equations, optimization, and random number generation.

The third and fourth parts of the book cover methods of computational statistics, including Monte Carlo methods, randomization and cross validation, the bootstrap, probability density estimation, and statistical learning.

The book includes a large number of exercises with some solutions provided in an appendix.

James E. Gentle is University Professor of Computational Statistics at George Mason University. He is a Fellow of the American Statistical Association (ASA) and of the American Association for the Advancement of Science. He has held several national offices in the ASA and has served as associate editor of journals of the ASA as well as for other journals in statistics and computing. He is author of Random Number Generation and Monte Carlo Methods and Matrix Algebra.

Author(s): James E. Gentle (auth.)
Series: Statistics and Computing
Edition: 1
Publisher: Springer-Verlag New York
Year: 2009

Language: English
Pages: 728
Tags: Statistics and Computing/Statistics Programs; Numeric Computing; Data Mining and Knowledge Discovery; Simulation and Modeling; Appl.Mathematics/Computational Methods of Engineering; Numerical Analysis

Front Matter....Pages 1-18
Front Matter....Pages 1-3
Mathematical and Statistical Preliminaries....Pages 5-79
Front Matter....Pages 1-3
Computer Storage and Arithmetic....Pages 85-105
Algorithms and Programming....Pages 107-145
Approximation of Functions and Numerical Quadrature....Pages 147-202
Numerical Linear Algebra....Pages 203-240
Solution of Nonlinear Equations and Optimization....Pages 241-304
Generation of Random Numbers....Pages 305-331
Front Matter....Pages 1-3
Graphical Methods in Computational Statistics....Pages 337-370
Tools for Identification of Structure in Data....Pages 371-400
Estimation of Functions....Pages 401-415
Monte Carlo Methods for Statistical Inference....Pages 417-433
Data Randomization, Partitioning, and Augmentation....Pages 435-451
Bootstrap Methods....Pages 453-467
Front Matter....Pages 1-5
Estimation of Probability Density Functions Using Parametric Models....Pages 475-485
Nonparametric Estimation of Probability Density Functions....Pages 487-514
Statistical Learning and Data Mining....Pages 515-584
Statistical Models of Dependencies....Pages 585-640
Back Matter....Pages 642-727