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Improve Your Analytical Skills Incorporating the latest R packages
as well as new case studies and applications, Using R and RStudio
for Data Management, Statistical Analysis, and Graphics, Second
Edition covers the aspects of R most often used by statistical
analysts. New users of R will find the book's simple approach easy
to understand while more sophisticated users will appreciate the
invaluable source of task-oriented information. New to the Second
Edition The use of RStudio, which increases the productivity of R
users and helps users avoid error-prone cut-and-paste workflows New
chapter of case studies illustrating examples of useful data
management tasks, reading complex files, making and annotating
maps, "scraping" data from the web, mining text files, and
generating dynamic graphics New chapter on special topics that
describes key features, such as processing by group, and explores
important areas of statistics, including Bayesian methods,
propensity scores, and bootstrapping New chapter on simulation that
includes examples of data generated from complex models and
distributions A detailed discussion of the philosophy and use of
the knitr and markdown packages for R New packages that extend the
functionality of R and facilitate sophisticated analyses
Reorganized and enhanced chapters on data input and output, data
management, statistical and mathematical functions, programming,
high-level graphics plots, and the customization of plots Easily
Find Your Desired Task Conveniently organized by short, clear
descriptive entries, this edition continues to show users how to
easily perform an analytical task in R. Users can quickly find and
implement the material they need through the extensive indexing,
cross-referencing, and worked examples in the text. Datasets and
code are available for download on a supplementary website.
Accessible to a general audience with some background in statistics
and computing Many examples and extended case studies Illustrations
using R and Rstudio A true blend of statistics and computer science
-- not just a grab bag of topics from each
Quick and Easy Access to Key Elements of Documentation Includes
worked examples across a wide variety of applications, tasks, and
graphics A unique companion for statistical coders, Using SAS for
Data Management, Statistical Analysis, and Graphics presents an
easy way to learn how to perform an analytical task in SAS, without
having to navigate through the extensive, idiosyncratic, and
sometimes unwieldy software documentation. Organized by short,
clear descriptive entries, the book covers many common tasks, such
as data management, descriptive summaries, inferential procedures,
regression analysis, multivariate methods, and the creation of
graphics. Through the extensive indexing, cross-referencing, and
worked examples in this text, users can directly find and implement
the material they need. The text includes convenient indices
organized by topic and SAS syntax. Demonstrating the SAS code in
action and facilitating exploration, the authors present example
analyses that employ a single data set from the HELP study. They
also provide several case studies of more complex applications.
Data sets and code are available for download on the book's
website. Helping to improve your analytical skills, this book
lucidly summarizes the features of SAS most often used by
statistical analysts. New users of SAS will find the simple
approach easy to understand while more expert SAS programmers will
appreciate the invaluable source of task-oriented information.
Quick and Easy Access to Key Elements of Documentation Includes
worked examples across a wide variety of applications, tasks, and
graphics A unique companion for statistical coders, Using SAS for
Data Management, Statistical Analysis, and Graphics presents an
easy way to learn how to perform an analytical task in SAS, without
having to navigate through the extensive, idiosyncratic, and
sometimes unwieldy software documentation. Organized by short,
clear descriptive entries, the book covers many common tasks, such
as data management, descriptive summaries, inferential procedures,
regression analysis, multivariate methods, and the creation of
graphics. Through the extensive indexing, cross-referencing, and
worked examples in this text, users can directly find and implement
the material they need. The text includes convenient indices
organized by topic and SAS syntax. Demonstrating the SAS code in
action and facilitating exploration, the authors present example
analyses that employ a single data set from the HELP study. They
also provide several case studies of more complex applications.
Data sets and code are available for download on the book's
website. Helping to improve your analytical skills, this book
lucidly summarizes the features of SAS most often used by
statistical analysts. New users of SAS will find the simple
approach easy to understand while more expert SAS programmers will
appreciate the invaluable source of task-oriented information.
Improve Your Analytical Skills Incorporating the latest R packages
as well as new case studies and applications, Using R and RStudio
for Data Management, Statistical Analysis, and Graphics, Second
Edition covers the aspects of R most often used by statistical
analysts. New users of R will find the book's simple approach easy
to understand while more sophisticated users will appreciate the
invaluable source of task-oriented information. New to the Second
Edition The use of RStudio, which increases the productivity of R
users and helps users avoid error-prone cut-and-paste workflows New
chapter of case studies illustrating examples of useful data
management tasks, reading complex files, making and annotating
maps, "scraping" data from the web, mining text files, and
generating dynamic graphics New chapter on special topics that
describes key features, such as processing by group, and explores
important areas of statistics, including Bayesian methods,
propensity scores, and bootstrapping New chapter on simulation that
includes examples of data generated from complex models and
distributions A detailed discussion of the philosophy and use of
the knitr and markdown packages for R New packages that extend the
functionality of R and facilitate sophisticated analyses
Reorganized and enhanced chapters on data input and output, data
management, statistical and mathematical functions, programming,
high-level graphics plots, and the customization of plots Easily
Find Your Desired Task Conveniently organized by short, clear
descriptive entries, this edition continues to show users how to
easily perform an analytical task in R. Users can quickly find and
implement the material they need through the extensive indexing,
cross-referencing, and worked examples in the text. Datasets and
code are available for download on a supplementary website.
An Up-to-Date, All-in-One Resource for Using SAS and R to Perform
Frequent TasksThe first edition of this popular guide provided a
path between SAS and R using an easy-to-understand, dictionary-like
approach. Retaining the same accessible format, SAS and R: Data
Management, Statistical Analysis, and Graphics, Second Edition
explains how to easily perform an analytical task in both SAS and
R, without having to navigate through the extensive, idiosyncratic,
and sometimes unwieldy software documentation. The book covers many
common tasks, such as data management, descriptive summaries,
inferential procedures, regression analysis, and graphics, along
with more complex applications. New to the Second EditionThis
edition now covers RStudio, a powerful and easy-to-use interface
for R. It incorporates a number of additional topics, including
using application program interfaces (APIs), accessing data through
database management systems, using reproducible analysis tools, and
statistical analysis with Markov chain Monte Carlo (MCMC) methods
and finite mixture models. It also includes extended examples of
simulations and many new examples. Enables Easy Mobility between
the Two SystemsThrough the extensive indexing and
cross-referencing, users can directly find and implement the
material they need. SAS users can look up tasks in the SAS index
and then find the associated R code while R users can benefit from
the R index in a similar manner. Numerous example analyses
demonstrate the code in action and facilitate further exploration.
The datasets and code are available for download on the book's
website.
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