Interactive and Dynamic Graphics for Data Analysis Interactive and Dynamic Graphics for Data Analysis
Use R

Interactive and Dynamic Graphics for Data Analysis

With R and GGobi

    • 67,99 €
    • 67,99 €

Description de l’éditeur

This richly illustrated book describes the use of interactive and dynamic graphics as part of multidimensional data analysis. Chapters include clustering, supervised classification, and working with missing values. A variety of plots and interaction methods are used in each analysis, often starting with brushing linked low-dimensional views and working up to manual manipulation of tours of several variables. The role of graphical methods is shown at each step of the analysis, not only in the early exploratory phase, but in the later stages, too, when comparing and evaluating models.

All examples are based on freely available software: GGobi for interactive graphics and R for static graphics, modeling, and programming. The printed book is augmented by a wealth of material on the web, encouraging readers follow the examples themselves. The web site has all the data and code necessary to reproduce the analyses in the book, along with movies demonstrating the examples.

The book may be used as a text in a class on statistical graphics or exploratory data analysis, for example, or as a guide for the independent learner. Each chapter ends with a set of exercises.

The authors are both Fellows of the American Statistical Association, past chairs of the Section on Statistical Graphics, and co-authors of the GGobi software. Dianne Cook is Professor of Statistics at Iowa State University. Deborah Swayne is a member of the Statistics Research Department at AT&T Labs.

GENRE
Science et nature
SORTIE
2007
5 septembre
LANGUE
EN
Anglais
LONGUEUR
206
Pages
ÉDITIONS
Springer New York
DÉTAILS DU FOURNISSEUR
Springer Science & Business Media LLC
TAILLE
4,1
Mo
Interactive Graphics for Data Analysis Interactive Graphics for Data Analysis
2008
Machine Learning with R, the tidyverse, and mlr Machine Learning with R, the tidyverse, and mlr
2020
Object Oriented Data Analysis Object Oriented Data Analysis
2021
Visual Data Mining Visual Data Mining
2012
Challenges at the Interface of Data Analysis, Computer Science, and Optimization Challenges at the Interface of Data Analysis, Computer Science, and Optimization
2012
Guide to Intelligent Data Analysis Guide to Intelligent Data Analysis
2010
ggplot2 ggplot2
2016
Applied Spatial Data Analysis with R Applied Spatial Data Analysis with R
2013
Bayesian Networks in R Bayesian Networks in R
2014
Biostatistics with R Biostatistics with R
2011
Wavelet Methods in Statistics with R Wavelet Methods in Statistics with R
2010
Introductory Time Series with R Introductory Time Series with R
2009