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Since Charles Spearman published his seminal paper on factor
analysis in 1904 and Karl Joresk ] og replaced the observed
variables in an econometric structural equation model by latent
factors in 1970, causal modelling by means of latent variables has
become the standard in the social and behavioural sciences. Indeed,
the central va- ables that social and behavioural theories deal
with, can hardly ever be identi?ed as observed variables.
Statistical modelling has to take account of measurement - rors and
invalidities in the observed variables and so address the
underlying latent variables. Moreover, during the past decades it
has been widely agreed on that serious causal modelling should be
based on longitudinal data. It is especially in the ?eld of
longitudinal research and analysis, including panel research, that
progress has been made in recent years. Many comprehensive panel
data sets as, for example, on human development and voting
behaviour have become available for analysis. The number of
publications based on longitudinal data has increased immensely.
Papers with causal claims based on cross-sectional data only
experience rejection just for that reason."
After Karl JAreskog's first presentation in 1970, Structural
Equation Modelling or SEM has become a main statistical tool in
many fields of science. It is the standard approach of factor
analytic and causal modelling in such diverse fields as sociology,
education, psychology, economics, management and medical sciences.
In addition to an extension of its application area, Structural
Equation Modelling also features a continual renewal and extension
of its theoretical background. The sixteen contributions to this
book, written by experts from many countries, present important new
developments and interesting applications in Structural Equation
Modelling. The book addresses methodologists and statisticians
professionally dealing with Structural Equation Modelling to
enhance their knowledge of the type of models covered and the
technical problems involved in their formulation. In addition, the
book offers applied researchers new ideas about the use of
Structural Equation Modeling in solving their problems. Finally,
methodologists, mathematicians and applied researchers alike are
addressed, who simply want to update their knowledge of recent
approaches in data analysis and mathematical modelling.
The three decades which have followed the publication of Heinz
Neudecker's seminal paper `Some Theorems on Matrix Differentiation
with Special Reference to Kronecker Products' in the Journal of the
American Statistical Association (1969) have witnessed the growing
influence of matrix analysis in many scientific disciplines.
Amongst these are the disciplines to which Neudecker has
contributed directly - namely econometrics, economics,
psychometrics and multivariate analysis. This book aims to
illustrate how powerful the tools of matrix analysis have become as
weapons in the statistician's armoury. The majority of its chapters
are concerned primarily with theoretical innovations, but all of
them have applications in view, and some of them contain extensive
illustrations of the applied techniques. This book will provide
research workers and graduate students with a cross-section of
innovative work in the fields of matrix methods and multivariate
statistical analysis. It should be of interest to students and
practitioners in a wide range of subjects which rely upon modern
methods of statistical analysis. The contributors to the book are
themselves practitioners of a wide range of subjects including
econometrics, psychometrics, educational statistics, computation
methods and electrical engineering, but they find a common ground
in the methods which are represented in the book. It is envisaged
that the book will serve as an important work of reference and as a
source of inspiration for some years to come.
This new volume reviews longitudinal models and analysis procedures
for use in the behavioral and social sciences. Written by
distinguished experts in the field, the book presents the most
current approaches and theories, and the technical problems that
may be encountered along the way. Readers will find new ideas about
the use of longitudinal analysis in solving problems that arise due
to the specific nature of the research design and the data
available. Divided into two parts, Longitudinal Models in the
Behavioral and Related Sciences opens with the latest theoretical
developments. In particular, the book addresses situations that
arise due to the categorical nature of the data, issues related to
state space modeling, and potential problems that may arise from
network analysis and/or growth-curve data. The focus of part two is
on the application of longitudinal modeling in a variety of
disciplines. The book features applications such as heterogeneity
on the patterns of a firm's profit, on house prices, and on
delinquent behavior; non-linearity in growth in assessing cognitive
aging; measurement error issues in longitudinal research; and
distance association for the analysis of change. Part two clearly
demonstrates the caution that should be taken when applying
longitudinal modeling as well as in the interpretation of the
results. Longitudinal Models in the Behavioral and Related Sciences
is ideal for advanced students and researchers in psychology,
sociology, education, economics, management, medicine, and
neuroscience.
Since Charles Spearman published his seminal paper on factor
analysis in 1904 and Karl Joresk og replaced the observed variables
in an econometric structural equation model by latent factors in
1970, causal modelling by means of latent variables has become the
standard in the social and behavioural sciences. Indeed, the
central va- ables that social and behavioural theories deal with,
can hardly ever be identi?ed as observed variables. Statistical
modelling has to take account of measurement - rors and
invalidities in the observed variables and so address the
underlying latent variables. Moreover, during the past decades it
has been widely agreed on that serious causal modelling should be
based on longitudinal data. It is especially in the ?eld of
longitudinal research and analysis, including panel research, that
progress has been made in recent years. Many comprehensive panel
data sets as, for example, on human development and voting
behaviour have become available for analysis. The number of
publications based on longitudinal data has increased immensely.
Papers with causal claims based on cross-sectional data only
experience rejection just for that reason.
The three decades which have followed the publication of Heinz
Neudecker's seminal paper Some Theorems on Matrix Differentiation
with Special Reference to Kronecker Products' in the Journal of the
American Statistical Association (1969) have witnessed the growing
influence of matrix analysis in many scientific disciplines.
Amongst these are the disciplines to which Neudecker has
contributed directly - namely econometrics, economics,
psychometrics and multivariate analysis. This book aims to
illustrate how powerful the tools of matrix analysis have become as
weapons in the statistician's armoury. The majority of its chapters
are concerned primarily with theoretical innovations, but all of
them have applications in view, and some of them contain extensive
illustrations of the applied techniques. This book will provide
research workers and graduate students with a cross-section of
innovative work in the fields of matrix methods and multivariate
statistical analysis. It should be of interest to students and
practitioners in a wide range of subjects which rely upon modern
methods of statistical analysis. The contributors to the book are
themselves practitioners of a wide range of subjects including
econometrics, psychometrics, educational statistics, computation
methods and electrical engineering, but they find a common ground
in the methods which are represented in the book. It is envisaged
that the book will serve as an important work of reference and as a
source of inspiration for some years to come.
After Karl Joreskog's first presentation in 1970, Structural
Equation Modelling or SEM has become a main statistical tool in
many fields of science. It is the standard approach of factor
analytic and causal modelling in such diverse fields as sociology,
education, psychology, economics, management and medical sciences.
In addition to an extension of its application area, Structural
Equation Modelling also features a continual renewal and extension
of its theoretical background. The sixteen contributions to this
book, written by experts from many countries, present important new
developments and interesting applications in Structural Equation
Modelling. The book addresses methodologists and statisticians
professionally dealing with Structural Equation Modelling to
enhance their knowledge of the type of models covered and the
technical problems involved in their formulation. In addition, the
book offers applied researchers new ideas about the use of
Structural Equation Modeling in solving their problems. Finally,
methodologists, mathematicians and applied researchers alike are
addressed, who simply want to update their knowledge of recent
approaches in data analysis and mathematical modelling."
This new volume reviews longitudinal models and analysis procedures
for use in the behavioral and social sciences. Written by
distinguished experts in the field, the book presents the most
current approaches and theories, and the technical problems that
may be encountered along the way. Readers will find new ideas about
the use of longitudinal analysis in solving problems that arise due
to the specific nature of the research design and the data
available. Divided into two parts, Longitudinal Models in the
Behavioral and Related Sciences opens with the latest theoretical
developments. In particular, the book addresses situations that
arise due to the categorical nature of the data, issues related to
state space modeling, and potential problems that may arise from
network analysis and/or growth-curve data. The focus of part two is
on the application of longitudinal modeling in a variety of
disciplines. The book features applications such as heterogeneity
on the patterns of a firm's profit, on house prices, and on
delinquent behavior; non-linearity in growth in assessing cognitive
aging; measurement error issues in longitudinal research; and
distance association for the analysis of change. Part two clearly
demonstrates the caution that should be taken when applying
longitudinal modeling as well as in the interpretation of the
results. Longitudinal Models in the Behavioral and Related Sciences
is ideal for advanced students and researchers in psychology,
sociology, education, economics, management, medicine, and
neuroscience.
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