|
|
Showing 1 - 6 of
6 matches in All Departments
This volume is the second edition of Hancock and Mueller's
highly-successful 2006 volume, with all of the original chapters
updated as well as four new chapters. The second edition, like the
first, is intended to serve as a didactically-oriented resource for
graduate students and research professionals, covering a broad
range of advanced topics often not discussed in introductory
courses on structural equation modeling (SEM). Such topics are
important in furthering the understanding of foundations and
assumptions underlying SEM as well as in exploring SEM, as a
potential tool to address new types of research questions that
might not have arisen during a first course. Chapters focus on the
clear explanation and application of topics, rather than on
analytical derivations, and contain materials from popular SEM
software. "This book represents a significant updating and
expansion of Hancock and Mueller's excellent first edition that
explores a variety of topics not typically covered in introductory
SEM courses. The second edition is again characterized by the
substantial strengths of the original text including a clearly
articulated didactic presentation style and a cohesive voice that
connects each chapter to the next. This revised edition not only
incorporates comprehensive updates to the original material but
also includes the addition of a number of wholly new chapters
covering important and contemporary topics including partial least
squares estimation, conditional process modeling, exploratory SEM,
and Bayesian estimation. Taken together, this is an indispensable
resource for both beginner and advanced users of SEM across the
social and behavioral sciences; I recommend it highly." -- Patrick
J. Curran, University of North Carolina at Chapel Hill
During the last two decades, structural equation modeling (SEM) has
emerged as a powerful multivariate data analysis tool in social
science research settings, especially in the fields of sociology,
psychology, and education. Although its roots can be traced back to
the first half of this century, when Spearman (1904) developed
factor analysis and Wright (1934) introduced path analysis, it was
not until the 1970s that the works by Karl Joreskog and his
associates (e. g., Joreskog, 1977; Joreskog and Van Thillo, 1973)
began to make general SEM techniques accessible to the social and
behavioral science research communities. Today, with the
development and increasing avail ability of SEM computer programs,
SEM has become a well-established and respected data analysis
method, incorporating many of the traditional analysis techniques
as special cases. State-of-the-art SEM software packages such as
LISREL (Joreskog and Sorbom, 1993a, b) and EQS (Bentler, 1993;
Bentler and Wu, 1993) handle a variety of ordinary least squares
regression designs as well as complex structural equation models
involving variables with arbitrary distributions. Unfortunately,
many students and researchers hesitate to use SEM methods, perhaps
due to the somewhat complex underlying statistical repre sentation
and theory. In my opinion, social science students and researchers
can benefit greatly from acquiring knowledge and skills in SEM
since the methods-applied appropriately-can provide a bridge
between the theo retical and empirical aspects of behavioral
research."
During the last two decades, structural equation modeling (SEM) has
emerged as a powerful multivariate data analysis tool in social
science research settings, especially in the fields of sociology,
psychology, and education. Although its roots can be traced back to
the first half of this century, when Spearman (1904) developed
factor analysis and Wright (1934) introduced path analysis, it was
not until the 1970s that the works by Karl Joreskog and his
associates (e. g., Joreskog, 1977; Joreskog and Van Thillo, 1973)
began to make general SEM techniques accessible to the social and
behavioral science research communities. Today, with the
development and increasing avail ability of SEM computer programs,
SEM has become a well-established and respected data analysis
method, incorporating many of the traditional analysis techniques
as special cases. State-of-the-art SEM software packages such as
LISREL (Joreskog and Sorbom, 1993a, b) and EQS (Bentler, 1993;
Bentler and Wu, 1993) handle a variety of ordinary least squares
regression designs as well as complex structural equation models
involving variables with arbitrary distributions. Unfortunately,
many students and researchers hesitate to use SEM methods, perhaps
due to the somewhat complex underlying statistical repre sentation
and theory. In my opinion, social science students and researchers
can benefit greatly from acquiring knowledge and skills in SEM
since the methods-applied appropriately-can provide a bridge
between the theo retical and empirical aspects of behavioral
research."
The Reviewer's Guide to Quantitative Methods in the Social Sciences
provides evaluators of research manuscripts and proposals in the
social and behavioral sciences with the resources they need to
read, understand, and assess quantitative work. 35 uniquely
structured chapters cover both traditional and emerging methods of
quantitative data analysis, which neither junior nor veteran
reviewers can be expected to know in detail. The second edition of
this valuable resource updates readers on each technique's key
principles, appropriate usage, underlying assumptions and
limitations, providing reviewers with the information they need to
offer constructive commentary on works they evaluate. Written by
methodological and applied scholars, this volume is also an
indispensable author's reference for preparing sound research
manuscripts and proposals.
The Reviewer's Guide to Quantitative Methods in the Social Sciences
provides evaluators of research manuscripts and proposals in the
social and behavioral sciences with the resources they need to
read, understand, and assess quantitative work. 35 uniquely
structured chapters cover both traditional and emerging methods of
quantitative data analysis, which neither junior nor veteran
reviewers can be expected to know in detail. The second edition of
this valuable resource updates readers on each technique's key
principles, appropriate usage, underlying assumptions and
limitations, providing reviewers with the information they need to
offer constructive commentary on works they evaluate. Written by
methodological and applied scholars, this volume is also an
indispensable author's reference for preparing sound research
manuscripts and proposals.
This volume is the second edition of Hancock and Mueller's
highly-successful 2006 volume, with all of the original chapters
updated as well as four new chapters. The second edition, like the
first, is intended to serve as a didactically-oriented resource for
graduate students and research professionals, covering a broad
range of advanced topics often not discussed in introductory
courses on structural equation modeling (SEM). Such topics are
important in furthering the understanding of foundations and
assumptions underlying SEM as well as in exploring SEM, as a
potential tool to address new types of research questions that
might not have arisen during a first course. Chapters focus on the
clear explanation and application of topics, rather than on
analytical derivations, and contain materials from popular SEM
software. "This book represents a significant updating and
expansion of Hancock and Mueller's excellent first edition that
explores a variety of topics not typically covered in introductory
SEM courses. The second edition is again characterized by the
substantial strengths of the original text including a clearly
articulated didactic presentation style and a cohesive voice that
connects each chapter to the next. This revised edition not only
incorporates comprehensive updates to the original material but
also includes the addition of a number of wholly new chapters
covering important and contemporary topics including partial least
squares estimation, conditional process modeling, exploratory SEM,
and Bayesian estimation. Taken together, this is an indispensable
resource for both beginner and advanced users of SEM across the
social and behavioral sciences; I recommend it highly." -- Patrick
J. Curran, University of North Carolina at Chapel Hill
|
You may like...
Loot
Nadine Gordimer
Paperback
(2)
R367
R340
Discovery Miles 3 400
|