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15 matches in All Departments
Full of real-world case studies and practical advice, Exploratory
Multivariate Analysis by Example Using R, Second Edition focuses on
four fundamental methods of multivariate exploratory data analysis
that are most suitable for applications. It covers principal
component analysis (PCA) when variables are quantitative,
correspondence analysis (CA) and multiple correspondence analysis
(MCA) when variables are categorical, and hierarchical cluster
analysis. The authors take a geometric point of view that provides
a unified vision for exploring multivariate data tables. Within
this framework, they present the principles, indicators, and ways
of representing and visualising objects that are common to the
exploratory methods. The authors show how to use categorical
variables in a PCA context in which variables are quantitative, how
to handle more than two categorical variables in a CA context in
which there are originally two variables, and how to add
quantitative variables in an MCA context in which variables are
categorical. They also illustrate the methods using examples from
various fields, with related R code accessible in the FactoMineR
package developed by the authors.
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R for Statistics (Hardcover)
Pierre-Andre Cornillon, Arnaud Guyader, Francois Husson, Nicolas Jegou, Julie Josse, …
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R5,300
Discovery Miles 53 000
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Ships in 12 - 17 working days
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Although there are currently a wide variety of software packages
suitable for the modern statistician, R has the triple advantage of
being comprehensive, widespread, and free. Published in 2008, the
second edition of Statistiques avec R enjoyed great success as an R
guidebook in the French-speaking world. Translated and updated, R
for Statistics includes a number of expanded and additional worked
examples. Organized into two sections, the book focuses first on
the R software, then on the implementation of traditional
statistical methods with R. Focusing on the R software, the first
section covers: Basic elements of the R software and data
processing Clear, concise visualization of results, using simple
and complex graphs Programming basics: pre-defined and user-created
functions The second section of the book presents R methods for a
wide range of traditional statistical data processing techniques,
including: Regression methods Analyses of variance and covariance
Classification methods Exploratory multivariate analysis Clustering
methods Hypothesis tests After a short presentation of the method,
the book explicitly details the R command lines and gives commented
results. Accessible to novices and experts alike, R for Statistics
is a clear and enjoyable resource for any scientist. Datasets and
all the results described in this book are available on the book's
webpage at http://www.agrocampus-ouest.fr/math/RforStat
Full of real-world case studies and practical advice, Exploratory
Multivariate Analysis by Example Using R, Second Edition focuses on
four fundamental methods of multivariate exploratory data analysis
that are most suitable for applications. It covers principal
component analysis (PCA) when variables are quantitative,
correspondence analysis (CA) and multiple correspondence analysis
(MCA) when variables are categorical, and hierarchical cluster
analysis. The authors take a geometric point of view that provides
a unified vision for exploring multivariate data tables. Within
this framework, they present the principles, indicators, and ways
of representing and visualising objects that are common to the
exploratory methods. The authors show how to use categorical
variables in a PCA context in which variables are quantitative, how
to handle more than two categorical variables in a CA context in
which there are originally two variables, and how to add
quantitative variables in an MCA context in which variables are
categorical. They also illustrate the methods using examples from
various fields, with related R code accessible in the FactoMineR
package developed by the authors.
|
R for Statistics (Paperback, New)
Pierre-Andre Cornillon, Arnaud Guyader, Francois Husson, Nicolas Jegou, Julie Josse, …
|
R1,646
Discovery Miles 16 460
|
Ships in 12 - 17 working days
|
Although there are currently a wide variety of software packages
suitable for the modern statistician, R has the triple advantage of
being comprehensive, widespread, and free. Published in 2008, the
second edition of Statistiques avec R enjoyed great success as an R
guidebook in the French-speaking world. Translated and updated, R
for Statistics includes a number of expanded and additional worked
examples.
Organized into two sections, the book focuses first on the R
software, then on the implementation of traditional statistical
methods with R.
Focusing on the R software, the first section covers:
- Basic elements of the R software and data processing
- Clear, concise visualization of results, using simple and
complex graphs
- Programming basics: pre-defined and user-created functions
The second section of the book presents R methods for a wide
range of traditional statistical data processing techniques,
including:
- Regression methods
- Analyses of variance and covariance
- Classification methods
- Exploratory multivariate analysis
- Clustering methods
- Hypothesis tests
After a short presentation of the method, the book explicitly
details the R command lines and gives commented results. Accessible
to novices and experts alike, R for Statistics is a clear and
enjoyable resource for any scientist.
Datasets and all the results described in this book are
available on the book s webpage at http:
//www.agrocampus-ouest.fr/math/RforStat
|
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