Numerical Analysis for Statisticians Numerical Analysis for Statisticians
Statistics and Computing

Numerical Analysis for Statisticians

Second Edition

    • ‏74٫99 US$
    • ‏74٫99 US$

وصف الناشر

Every advance in computer architecture and software tempts statisticians to tackle numerically harder problems. To do so intelligently requires a good working knowledge of numerical analysis. This book equips students to craft their own software and to understand the advantages and disadvantages of different numerical methods. Issues of numerical stability, accurate approximation, computational complexity, and mathematical modeling share the limelight in a broad yet rigorous overview of those parts of numerical analysis most relevant to statisticians.
In this second edition, the material on optimization has been completely rewritten. There is now an entire chapter on the MM algorithm in addition to more comprehensive treatments of constrained optimization, penalty and barrier methods, and model selection via the lasso. There is also new material on the Cholesky decomposition, Gram-Schmidt orthogonalization, the QR decomposition, the singular value decomposition, and reproducing kernel Hilbert spaces. The discussions of the bootstrap, permutation testing, independent Monte Carlo, and hidden Markov chains are updated, and a new chapter on advanced MCMC topics introduces students to Markov random fields, reversible jump MCMC, and convergence analysis in Gibbs
sampling.
Numerical Analysis for Statisticians can serve as a graduate text for a course surveying computational statistics. With a careful selection of topics and appropriate supplementation, it can be used at the undergraduate level. It contains enough material for a graduate course on optimization theory. Because many chapters are nearly self-contained, professional statisticians will also find the book useful as a reference.
Kenneth Lange is the Rosenfeld Professor of Computational Genetics in the Departments of Biomathematics and Human Genetics and the Chair of the Department of Human Genetics, all in the UCLA School of Medicine. His research interests include human genetics, population modeling, biomedical imaging, computational statistics, high-dimensional optimization, and applied stochastic processes. Springer previously published his books Mathematical and Statistical Methods for Genetic Analysis, 2nd ed., Applied Probability, and Optimization. He has written over 200 research papers and produced with his UCLA colleague Eric Sobel the computer program Mendel, widely used in statistical genetics.

النوع
تمويل شركات وأفراد
تاريخ النشر
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١٧ مايو
اللغة
EN
الإنجليزية
عدد الصفحات
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الناشر
Springer New York
البائع
Springer Nature B.V.
الحجم
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‫م.ب.‬
Optimization Optimization
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High-Dimensional Statistics High-Dimensional Statistics
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Learning Theory Learning Theory
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Asymptotic Statistics Asymptotic Statistics
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Large Sample Techniques for Statistics Large Sample Techniques for Statistics
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Optimization for Data Analysis Optimization for Data Analysis
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Optimization Optimization
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Applied Probability Applied Probability
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Software for Data Analysis Software for Data Analysis
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Introductory Statistics with R Introductory Statistics with R
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The Grammar of Graphics The Grammar of Graphics
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R for SAS and SPSS Users R for SAS and SPSS Users
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Applied Time Series Analysis and Forecasting with Python Applied Time Series Analysis and Forecasting with Python
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Basic Elements of Computational Statistics Basic Elements of Computational Statistics
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