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The importance that practitioners are placing on longitudinal
designs and analyses signals a critical shift toward methods that
enable a better understanding of developmental processes thought to
underlie many human attributes and behaviors. A simple scan of
one's own applied literature reveals evidence of this trend through
the increasing number of articles adopting longitudinal methods as
their primary analytic tools. Advances in Longitudinal Methods in
the Social and Behavioral Sciences is a resource intended for
advanced graduate students, faculty, and applied researchers
interested in longitudinal data analysis, especially in the social
and behavioral sciences. The chapters are written by established
methodological researchers from diverse research domains such as
psychology, biostatistics, educational statistics, psychometrics,
and family sciences. Each chapter exposes the reader to some of the
latest methodological developments and perspectives in the analysis
of longitudinal data, and is written in a didactic tone that makes
the content accessible to the broader research community. This
volume will be particularly appealing to researchers in domains
including, but not limited to: human development, clinical
psychology, educational psychology, school psychology, special
education, epidemiology, family science, kinesiology, communication
disorders, and education policy and administration. The book will
also be attractive to members of several professional organizations
such as the American Educational Research Association (AERA), the
American Psychological Association (APA), the Association for
Psychological Science (APS), the Society for Research on
Adolescence (SRA), the Society for Research in Child Development
(SRCD), Society for Research in Adult Development (SRAD), British
Psychological Society (BPS), Canadian Psychological Association
(CPA), and other related organizations.
The significance that practitioners are placing on the use of
multilevel models is undeniable as researchers want to both
accurately partition variance stemming from complex sampling
designs and understand relations within and between variables
describing the hierarchical levels of these nested data structures.
Simply scan the applied literature and one can see evidence of this
trend by noticing the number of articles adopting multilevel models
as their primary modeling framework. Helping to drive the
popularity of their use, governmental funding agencies continue to
advocate the use of multilevel models as part of a comprehensive
analytic strategy for conducting rigorous and relevant research to
improve our nation's education system. Advances in Multilevel
Modeling for Educational Research: Addressing Practical Issues
Found in Real?World Applications is a resource intended for
advanced graduate students, faculty and/or researchers interested
in multilevel data analysis, especially in education, social and
behavioral sciences. The chapters are written by prominent
methodological researchers across diverse research domains such as
educational statistics, quantitative psychology, and psychometrics.
Each chapter exposes the reader to some of the latest
methodological innovations, refinements and state?of?the?art
developments and perspectives in the analysis of multilevel data
including current best practices of standard techniques. We believe
this volume will be particularly appealing to researchers in
domains including but not limited to: educational policy and
administration, educational psychology including school psychology
and special education, and clinical psychology. In fact, we believe
this volume will be a desirable resource for any research area that
uses hierarchically nested data. The book will likely be attractive
to applied and methodological researchers in several professional
organizations such as the American Educational Research Association
(AERA), the American Psychological Association (APA), the American
Psychological Society (APS), the Society for Research on
Educational Effectiveness (SREE), and other related organizations.
What is latent class analysis? If you asked that question thirty or
forty years ago you would have gotten a different answer than you
would today. Closer to its time of inception, latent class analysis
was viewed primarily as a categorical data analysis technique,
often framed as a factor analysis model where both the measured
variable indicators and underlying latent variables are
categorical. Today, however, it rests within much broader mixture
and diagnostic modeling framework, integrating measured and latent
variables that may be categorical and/or continuous, and where
latent classes serve to define the subpopulations for whom many
aspects of the focal measured and latent variable model may differ.
For latent class analysis to take these developmental leaps
required contributions that were methodological, certainly, as well
as didactic. Among the leaders on both fronts was C. Mitchell
"Chan" Dayton, at the University of Maryland, whose work in latent
class analysis spanning several decades helped the method to expand
and reach its current potential. The current volume in the Center
for Integrated Latent Variable Research (CILVR) series reflects the
diversity that is latent class analysis today, celebrating work
related to, made possible by, and inspired by Chan's noted
contributions, and signaling the even more exciting future yet to
come.
The significance that practitioners are placing on the use of
multilevel models is undeniable as researchers want to both
accurately partition variance stemming from complex sampling
designs and understand relations within and between variables
describing the hierarchical levels of these nested data structures.
Simply scan the applied literature and one can see evidence of this
trend by noticing the number of articles adopting multilevel models
as their primary modeling framework. Helping to drive the
popularity of their use, governmental funding agencies continue to
advocate the use of multilevel models as part of a comprehensive
analytic strategy for conducting rigorous and relevant research to
improve our nation's education system. Advances in Multilevel
Modeling for Educational Research: Addressing Practical Issues
Found in Real?World Applications is a resource intended for
advanced graduate students, faculty and/or researchers interested
in multilevel data analysis, especially in education, social and
behavioral sciences. The chapters are written by prominent
methodological researchers across diverse research domains such as
educational statistics, quantitative psychology, and psychometrics.
Each chapter exposes the reader to some of the latest
methodological innovations, refinements and state?of?the?art
developments and perspectives in the analysis of multilevel data
including current best practices of standard techniques. We believe
this volume will be particularly appealing to researchers in
domains including but not limited to: educational policy and
administration, educational psychology including school psychology
and special education, and clinical psychology. In fact, we believe
this volume will be a desirable resource for any research area that
uses hierarchically nested data. The book will likely be attractive
to applied and methodological researchers in several professional
organizations such as the American Educational Research Association
(AERA), the American Psychological Association (APA), the American
Psychological Society (APS), the Society for Research on
Educational Effectiveness (SREE), and other related organizations.
The importance that practitioners are placing on longitudinal
designs and analyses signals a critical shift toward methods that
enable a better understanding of developmental processes thought to
underlie many human attributes and behaviors. A simple scan of
one's own applied literature reveals evidence of this trend through
the increasing number of articles adopting longitudinal methods as
their primary analytic tools. Advances in Longitudinal Methods in
the Social and Behavioral Sciences is a resource intended for
advanced graduate students, faculty, and applied researchers
interested in longitudinal data analysis, especially in the social
and behavioral sciences. The chapters are written by established
methodological researchers from diverse research domains such as
psychology, biostatistics, educational statistics, psychometrics,
and family sciences. Each chapter exposes the reader to some of the
latest methodological developments and perspectives in the analysis
of longitudinal data, and is written in a didactic tone that makes
the content accessible to the broader research community. This
volume will be particularly appealing to researchers in domains
including, but not limited to: human development, clinical
psychology, educational psychology, school psychology, special
education, epidemiology, family science, kinesiology, communication
disorders, and education policy and administration. The book will
also be attractive to members of several professional organizations
such as the American Educational Research Association (AERA), the
American Psychological Association (APA), the Association for
Psychological Science (APS), the Society for Research on
Adolescence (SRA), the Society for Research in Child Development
(SRCD), Society for Research in Adult Development (SRAD), British
Psychological Society (BPS), Canadian Psychological Association
(CPA), and other related organizations.
What is latent class analysis? If you asked that question thirty or
forty years ago you would have gotten a different answer than you
would today. Closer to its time of inception, latent class analysis
was viewed primarily as a categorical data analysis technique,
often framed as a factor analysis model where both the measured
variable indicators and underlying latent variables are
categorical. Today, however, it rests within much broader mixture
and diagnostic modeling framework, integrating measured and latent
variables that may be categorical and/or continuous, and where
latent classes serve to define the subpopulations for whom many
aspects of the focal measured and latent variable model may differ.
For latent class analysis to take these developmental leaps
required contributions that were methodological, certainly, as well
as didactic. Among the leaders on both fronts was C. Mitchell
"Chan" Dayton, at the University of Maryland, whose work in latent
class analysis spanning several decades helped the method to expand
and reach its current potential. The current volume in the Center
for Integrated Latent Variable Research (CILVR) series reflects the
diversity that is latent class analysis today, celebrating work
related to, made possible by, and inspired by Chan's noted
contributions, and signaling the even more exciting future yet to
come.
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