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This book contains a rich set of tools for nonparametric analyses,
and the purpose of this text is to provide guidance to students and
professional researchers on how R is used for nonparametric data
analysis in the biological sciences: To introduce when
nonparametric approaches to data analysis are appropriate To
introduce the leading nonparametric tests commonly used in
biostatistics and how R is used to generate appropriate statistics
for each test To introduce common figures typically associated with
nonparametric data analysis and how R is used to generate
appropriate figures in support of each data set The book focuses on
how R is used to distinguish between data that could be classified
as nonparametric as opposed to data that could be classified as
parametric, with both approaches to data classification covered
extensively. Following an introductory lesson on nonparametric
statistics for the biological sciences, the book is organized into
eight self-contained lessons on various analyses and tests using R
to broadly compare differences between data sets and statistical
approach.
This book introduces the open source R software language that can
be implemented in biostatistics for data organization, statistical
analysis, and graphical presentation. In the years since the
authors' 2014 work Introduction to Data Analysis and Graphical
Presentation in Biostatistics with R, the R user community has
grown exponentially and the R language has increased in maturity
and functionality. This updated volume expands upon skill-sets
useful for students and practitioners in the biological sciences by
describing how to work with data in an efficient manner, how to
engage in meaningful statistical analyses from multiple
perspectives, and how to generate high-quality graphics for
professional publication of their research. A common theme for
research in the diverse biological sciences is that decision-making
depends on the empirical use of data. Beginning with a focus on
data from a parametric perspective, the authors address topics such
as Student t-Tests for independent samples and matched pairs;
oneway and twoway analyses of variance; and correlation and linear
regression. The authors also demonstrate the importance of a
nonparametric perspective for quality assurance through chapters on
the Mann-Whitney U Test, Wilcoxon Matched-Pairs Signed-Ranks test,
Kruskal-Wallis H-Test for Oneway Analysis of Variance, and the
Friedman Twoway Analysis of Variance. To address the element of
data presentation, the book also provides an extensive review of
the many graphical functions available with R. There are now
perhaps more than 15,000 external packages available to the R
community. The authors place special emphasis on graphics using the
lattice package and the ggplot2 package, as well as less common,
but equally useful, figures such as bean plots, strip charts, and
violin plots. A robust package of supplementary material, as well
as an introduction of the development of both R and the discipline
of biostatistics, makes this ideal for novice learners as well as
more experienced practitioners.
This book introduces the open source R software language that can
be implemented in biostatistics for data organization, statistical
analysis, and graphical presentation. In the years since the
authors' 2014 work Introduction to Data Analysis and Graphical
Presentation in Biostatistics with R, the R user community has
grown exponentially and the R language has increased in maturity
and functionality. This updated volume expands upon skill-sets
useful for students and practitioners in the biological sciences by
describing how to work with data in an efficient manner, how to
engage in meaningful statistical analyses from multiple
perspectives, and how to generate high-quality graphics for
professional publication of their research. A common theme for
research in the diverse biological sciences is that decision-making
depends on the empirical use of data. Beginning with a focus on
data from a parametric perspective, the authors address topics such
as Student t-Tests for independent samples and matched pairs;
oneway and twoway analyses of variance; and correlation and linear
regression. The authors also demonstrate the importance of a
nonparametric perspective for quality assurance through chapters on
the Mann-Whitney U Test, Wilcoxon Matched-Pairs Signed-Ranks test,
Kruskal-Wallis H-Test for Oneway Analysis of Variance, and the
Friedman Twoway Analysis of Variance. To address the element of
data presentation, the book also provides an extensive review of
the many graphical functions available with R. There are now
perhaps more than 15,000 external packages available to the R
community. The authors place special emphasis on graphics using the
lattice package and the ggplot2 package, as well as less common,
but equally useful, figures such as bean plots, strip charts, and
violin plots. A robust package of supplementary material, as well
as an introduction of the development of both R and the discipline
of biostatistics, makes this ideal for novice learners as well as
more experienced practitioners.
This book contains a rich set of tools for nonparametric analyses,
and the purpose of this text is to provide guidance to students and
professional researchers on how R is used for nonparametric data
analysis in the biological sciences: To introduce when
nonparametric approaches to data analysis are appropriate To
introduce the leading nonparametric tests commonly used in
biostatistics and how R is used to generate appropriate statistics
for each test To introduce common figures typically associated with
nonparametric data analysis and how R is used to generate
appropriate figures in support of each data set The book focuses on
how R is used to distinguish between data that could be classified
as nonparametric as opposed to data that could be classified as
parametric, with both approaches to data classification covered
extensively. Following an introductory lesson on nonparametric
statistics for the biological sciences, the book is organized into
eight self-contained lessons on various analyses and tests using R
to broadly compare differences between data sets and statistical
approach.
The wide array of possibilities for interactive distance learning
in today's schools can be daunting. This book will help educators
make the transition from technology-based learning modalities and
integrate elements of distance learning into the curriculum. With
emphasis on Internet-based delivery formats, author Jan M. Yates
presents the latest research and proven techniques for creating
effective distance-learning opportunities that enhance student
achievement. This guide is indispensable for anyone serious about
distance learning. Included are: An introduction A detailed
backgrounder (benefits, challenges, definitions) Models and
examples of distance learning Distance learning settings
Discussions of support technologies and their uses Evaluation of
interactive distance learning activities A wealth of information
about Web sites, vendors, and useful materials
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