A Handbook of Statistical Analyses Using R

Published:
Author(s):

Purchasing Options

Paperback
Not available
in your region
ISBN 9781584885399
Cat# C5394
 

Features

  • Explains systematically how to use R to perform a wide variety of statistical analyses
  • Emphasizes practical application and interpretation of results rather than focusing on the theory behind the analyses
  • Offers an introduction to R, including a summary of the most important features
  • Covers simple inference, generalized linear models, multilevel models, longitudinal data, classification and regression trees, discriminant analysis, and much more
  • Includes abundant figures and exercises to demonstrate the capabilities of R and reinforce the methods presented
  • Summary

    R is dynamic, to say the least. More precisely, it is organic, with new functionality and add-on packages appearing constantly. And because of its open-source nature and free availability, R is quickly becoming the software of choice for statistical analysis in a variety of fields.

    Doing for R what Everitt's other Handbooks have done for S-PLUS, STATA, SPSS, and SAS, A Handbook of Statistical Analyses Using R presents straightforward, self-contained descriptions of how to perform a variety of statistical analyses in the R environment. From simple inference to recursive partitioning and cluster analysis, eminent experts Everitt and Hothorn lead you methodically through the steps, commands, and interpretation of the results, addressing theory and statistical background only when useful or necessary. They begin with an introduction to R, discussing the syntax, general operators, and basic data manipulation while summarizing the most important features. Numerous figures highlight R's strong graphical capabilities and exercises at the end of each chapter reinforce the techniques and concepts presented. All data sets and code used in the book are available as a downloadable package from CRAN, the R online archive.

    A Handbook of Statistical Analyses Using R is the perfect guide for newcomers as well as seasoned users of R who want concrete, step-by-step guidance on how to use the software easily and effectively for nearly any statistical analysis.

    Table of Contents

    AN INTRODUCTION TO R
    What Is R?
    Installing R
    Help and Documentation
    Data Objects in R
    Data Import and Export
    Basic Data Manipulation
    Simple Summary Statistics
    Organising an Analysis
    Summary

    SIMPLE INFERENCE
    Introduction
    Statistical Tests
    Analysis Using R
    Summary

    CONDITIONAL INFERENCE
    Introduction
    Conditional Test Procedures
    Analysis Using R
    Summary

    ANALYSIS OF VARIANCE
    Introduction
    Analysis of Variance
    Analysis Using R
    Summary

    MULTIPLE LINEAR REGRESSION
    Introduction
    Multiple Linear Regression
    Analysis Using R
    Summary

    LOGISTIC REGRESSION AND GENERALISED LINEAR MODELS
    Introduction
    Logistic Regression and Generalised Linear Models
    Analysis Using R
    Summary

    DENSITY ESTIMATION
    Introduction
    Density Estimation
    Analysis Using R
    Summary

    RECURSIVE PARTITIONING
    Introduction
    Recursive Partitioning
    Analysis Using R
    Summary

    SURVIVAL ANALYSIS
    Introduction
    Survival Analysis
    Analysis Using R
    Summary

    ANALYSING LONGITUDINAL DATA I
    Introduction
    Analysing Longitudinal Data
    Linear Mixed Effects models
    Analysis Using R
    Prediction of Random Effects
    The Problem of Dropouts
    Summary

    ANALYSING LONGITUDINAL DATA II
    Introduction
    Generalised Estimating Equations
    Analysis Using R
    Summary

    META-ANALYSIS
    Introduction
    Systematic Reviews and Meta-Analysis
    Analysis Using R
    Meta-Regression
    Publication Bias
    Summary

    PRINCIPAL COMPONENT ANALYSIS
    Introduction
    Principal Component Analysis
    Analysis Using R
    Summary

    MULTIDIMENSIONAL SCALING
    Introduction
    Multidimensional Scaling
    Analysis Using R
    Summary

    CLUSTER ANALYSIS
    Introduction
    Cluster Analysis
    Analysis Using R
    Summary
    BIBLIOGRAPHY
    INDEX

    Editorial Reviews

    "…Brian Everitt has joined forces with a recognised expert who displays an impressive command of this powerful environment … Much is to be learned in the small details that make this text interesting even for experienced users. … Special attention is given to graphical methods and this particular feature (which is one of R's qualities) has given the reviewer much pleasure and excitement. …"
    -Journal of Applied Statistics, May 2007

    "Useful examples are presented to assist understanding. …Everitt and Hothorn have written an excellent tutorial on using R to analyze data using a wide range of standard statistical methods. They use numerous examples throughout the text, present 100 figures, and show 54 tables to augment discussion. All this is done in a book of only 275 pages in length. I highly recommend the text for anyone learning R, and who want to use it for the sophisticated analysis of data."
    -Joseph M. Hilbe, Emeritus Professor, University of Hawaii and Adjunct Professor, Sociology and Statistics, Arizona State University, Journal of Statistical Software, Vol. 16, August 2006

    "…The book is clearly meant to help a true beginner get started with the R package. It begins appropriately with a chapter presenting a description of R and installation instructions, the help (simple help) and vignette (detailed help) commands, and other available documentation. This chapter also discusses basic data handling techniques and methods for summarizing data. The remainder of the book consists of 14 chapters, each of which describes a different type of analysis. … The chapters are generally well laid out and easy to understand. The book covers ANOVA/MANOVA, several forms of regression, an assortment of multivariate analyses, and various other forms of statistical analysis. … For the experienced analyst wanting to learn R, this book is a useful, compact introduction."
    -Biometrics, December 2006

    "… This book, using analyses of real sets of data, takes the reader through many of the standard forms of statistical methodology using R. … a very valuable reference. …The book is particularly good at highlighting the graphical capabilities of the language. …"
    -P. Marriott (University of Waterloo, Canada), Short Book Reviews

    Downloads Updates


    Resource OS Platform Updated Description Instructions
    Cross Platform April 17, 2009 click on http://cran.r-project.org/web/packages/HSAUR/index.html

    Related Titles