Statistical Computing with R, Second Edition

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A01=Maria L. Rizzo
Author_Maria L. Rizzo
Basic Bootstrap Confidence Interval
BCa Bootstrap Confidence Interval
Bivariate Normal Mixture
Bootstrap and Jackknife
Bootstrap Confidence Interval
Bootstrap Confidence Interval Estimates
Bootstrap Estimates
bootstrap inference
Category=PBT
computational methods for data analysis
Computational Statistics and Statistical Computing
Control Variate Estimator
Cumulative Distribution Function
density estimation techniques
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
Gaussian Kernel Density Estimate
high dimensional statistics
Histogram Density Estimate
Homogeneous Poisson Process
Importance Functions
Independence Sampler
Markov chain analysis
Methods for Generating Random Variables
Monte Carlo Integration and Variance Reduction
MVN
NA NA
NA NA NA
NA NA NA NA
NA NA NA NA NA
Nearest Neighbor
Nonhomogeneous Poisson Process
Normal Reference Rule
Optimal Bin Width
Permutation Test
permutation testing
Probability and Statistics Review
probability modelling
Proposal Distribution
Random Walk Metropolis

Product details

  • ISBN 9781466553323
  • Weight: 880g
  • Dimensions: 156 x 234mm
  • Publication Date: 06 Mar 2019
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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Praise for the First Edition:

". . . the book serves as an excellent tutorial on the R language, providing examples that illustrate programming concepts in the context of practical computational problems. The book will be of great interest for all specialists working on computational statistics and Monte Carlo methods for modeling and simulation." – Tzvetan Semerdjiev, Zentralblatt Math

Computational statistics and statistical computing are two areas within statistics that may be broadly described as computational, graphical, and numerical approaches to solving statistical problems. Like its bestselling predecessor, Statistical Computing with R, Second Edition covers the traditional core material of these areas with an emphasis on using the R language via an examples-based approach. The new edition is up-to-date with the many advances that have been made in recent years.

Features

  • Provides an overview of computational statistics and an introduction to the R computing environment.
  • Focuses on implementation rather than theory.
  • Explores key topics in statistical computing including Monte Carlo methods in inference, bootstrap and jackknife, permutation tests, Markov chain Monte Carlo (MCMC) methods, and density estimation.
  • Includes new sections, exercises and applications as well as new chapters on resampling methods and programming topics.
  • Includes coverage of recent advances including R Studio, the tidyverse, knitr and ggplot2
  • Accompanied by online supplements available on GitHub including R code for all the exercises as well as tutorials and extended examples on selected topics.

Suitable for an introductory course in computational statistics or for self-study, Statistical Computing with R, Second Edition provides a balanced, accessible introduction to computational statistics and statistical computing.

About the Author

Maria Rizzo is Professor in the Department of Mathematics and Statistics at Bowling Green State University in Bowling Green, Ohio, where she teaches statistics, actuarial science, computational statistics, statistical programming and data science. Prior to joining the faculty at BGSU in 2006, she was Assistant Professor in the Department of Mathematics at Ohio University in Athens, Ohio. Her main research area is energy statistics and distance correlation. She is the software developer and maintainer of the energy package for R. She also enjoys writing books including a forthcoming joint research monograph on energy statistics.

Maria Rizzo is Professor in the Department of Mathematics and Statistics at Bowling Green State University in Bowling Green, Ohio, where she teaches statistics, actuarial science, computational statistics, statistical programming and data science. Prior to joining the faculty at BGSU in 2006, she was Assistant Professor in the Department of Mathematics at Ohio University in Athens, Ohio. Her main research area is energy statistics and distance correlation. She is the software developer and maintainer of the energy package for R. She also enjoys writing books including a forthcoming joint research monograph on energy statistics.

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