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Partial least squares structural equation modelling (PLS-SEM) is
becoming a popular statistical framework in many fields and
disciplines of the social sciences. The main reason for this
popularity is that PLS-SEM can be used to estimate models including
latent variables, observed variables, or a combination of these.
The popularity of PLS-SEM is predicted to increase even more as a
result of the development of new and more robust estimation
approaches, such as consistent PLS-SEM. The traditional and modern
estimation methods for PLS-SEM are now readily facilitated by both
open-source and commercial software packages. This book presents
PLS-SEM as a useful practical statistical toolbox that can be used
for estimating many different types of research models. In so
doing, the authors provide the necessary technical prerequisites
and theoretical treatment of various aspects of PLS-SEM prior to
practical applications. What makes the book unique is the fact that
it thoroughly explains and extensively uses comprehensive Stata
(plssem) and R (cSEM and plspm) packages for carrying out PLS-SEM
analysis. The book aims to help the reader understand the mechanics
behind PLS-SEM as well as performing it for publication purposes.
Features: Intuitive and technical explanations of PLS-SEM methods
Complete explanations of Stata and R packages Lots of example
applications of the methodology Detailed interpretation of software
output Reporting of a PLS-SEM study Github repository for
supplementary book material The book is primarily aimed at
researchers and graduate students from statistics, social science,
psychology, and other disciplines. Technical details have been
moved from the main body of the text into appendices, but it would
be useful if the reader has a solid background in linear regression
analysis.
Straightforward, clear, and applied, this book will give you the
theoretical and practical basis you need to apply data analysis
techniques to real data. Combining key statistical concepts with
detailed technical advice, it addresses common themes and problems
presented by real research, and shows you how to adjust your
techniques and apply your statistical knowledge to a range of
datasets. It also embeds code and software output throughout and is
supported by online resources to enable practice and safe
experimentation. The book includes: * Original case studies and
data sets * Practical exercises and lists of commands for each
chapter * Downloadable Stata programmes created to work alongside
chapters * A wide range of detailed applications using Stata *
Step-by-step guidance on writing the relevant code. This is the
perfect text for anyone doing statistical research in the social
sciences getting started using Stata for data analysis.
Partial least squares structural equation modelling (PLS-SEM) is
becoming a popular statistical framework in many fields and
disciplines of the social sciences. The main reason for this
popularity is that PLS-SEM can be used to estimate models including
latent variables, observed variables, or a combination of these.
The popularity of PLS-SEM is predicted to increase even more as a
result of the development of new and more robust estimation
approaches, such as consistent PLS-SEM. The traditional and modern
estimation methods for PLS-SEM are now readily facilitated by both
open-source and commercial software packages. This book presents
PLS-SEM as a useful practical statistical toolbox that can be used
for estimating many different types of research models. In so
doing, the authors provide the necessary technical prerequisites
and theoretical treatment of various aspects of PLS-SEM prior to
practical applications. What makes the book unique is the fact that
it thoroughly explains and extensively uses comprehensive Stata
(plssem) and R (cSEM and plspm) packages for carrying out PLS-SEM
analysis. The book aims to help the reader understand the mechanics
behind PLS-SEM as well as performing it for publication purposes.
Features: Intuitive and technical explanations of PLS-SEM methods
Complete explanations of Stata and R packages Lots of example
applications of the methodology Detailed interpretation of software
output Reporting of a PLS-SEM study Github repository for
supplementary book material The book is primarily aimed at
researchers and graduate students from statistics, social science,
psychology, and other disciplines. Technical details have been
moved from the main body of the text into appendices, but it would
be useful if the reader has a solid background in linear regression
analysis.
If you want to learn to use R for data analysis but aren't sure how
to get started, this practical book will help you find the right
path through your data. Drawing on real-world data to show you how
to use different techniques in practice, it helps you progress your
programming and statistics knowledge so you can apply the most
appropriate tools in your research. It starts with descriptive
statistics and moves through regression to advanced techniques such
as structural equation modelling and Bayesian statistics, all with
digestible mathematical detail for beginner researchers. The book:
Shows you how to use R packages and apply functions, adjusting them
to suit different datasets. Gives you the tools to try new
statistical techniques and empowers you to become confident using
them. Encourages you to learn by doing when running and adapting
the authors' own code. Equips you with solutions to overcome the
potential challenges of working with real data that may be messy or
imperfect. Accompanied by online resources including screencast
tutorials of R that give you step by step guidance and R scripts
and datasets for you to practice with, this book is a perfect
companion for any student of applied statistics or quantitative
research methods courses.
If you want to learn to use R for data analysis but aren't sure how
to get started, this practical book will help you find the right
path through your data. Drawing on real-world data to show you how
to use different techniques in practice, it helps you progress your
programming and statistics knowledge so you can apply the most
appropriate tools in your research. It starts with descriptive
statistics and moves through regression to advanced techniques such
as structural equation modelling and Bayesian statistics, all with
digestible mathematical detail for beginner researchers. The book:
Shows you how to use R packages and apply functions, adjusting them
to suit different datasets. Gives you the tools to try new
statistical techniques and empowers you to become confident using
them. Encourages you to learn by doing when running and adapting
the authors' own code. Equips you with solutions to overcome the
potential challenges of working with real data that may be messy or
imperfect. Accompanied by online resources including screencast
tutorials of R that give you step by step guidance and R scripts
and datasets for you to practice with, this book is a perfect
companion for any student of applied statistics or quantitative
research methods courses.
Straightforward, clear, and applied, this book will give you the
theoretical and practical basis you need to apply data analysis
techniques to real data. Combining key statistical concepts with
detailed technical advice, it addresses common themes and problems
presented by real research, and shows you how to adjust your
techniques and apply your statistical knowledge to a range of
datasets. It also embeds code and software output throughout and is
supported by online resources to enable practice and safe
experimentation. The book includes: * Original case studies and
data sets * Practical exercises and lists of commands for each
chapter * Downloadable Stata programmes created to work alongside
chapters * A wide range of detailed applications using Stata *
Step-by-step guidance on writing the relevant code. This is the
perfect text for anyone doing statistical research in the social
sciences getting started using Stata for data analysis.
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