<p><p>The book, belonging to the series βStudies in Theoretical and Applied Statisticsβ Selected Papers from the Statistical Societiesβ, presents a peer-reviewed selection of contributions on relevant topics organized by the editors on the occasion of the SIS 2013 Statistical Conference "Advances in
Latent Variable Modeling and Applications to Causality
β Scribed by Roderick P. McDonald (auth.), Maia Berkane (eds.)
- Publisher
- Springer-Verlag New York
- Year
- 1997
- Tongue
- English
- Leaves
- 284
- Series
- Lecture Notes in Statistics 120
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
This volume gathers refereed papers presented at the 1994 UCLA conference on "LaΒ tent Variable Modeling and Application to Causality. " The meeting was organized by the UCLA Interdivisional Program in Statistics with the purpose of bringing together a group of people who have done recent advanced work in this field. The papers in this volume are representative of a wide variety of disciplines in which the use of latent variable models is rapidly growing. The volume is divided into two broad sections. The first section covers Path Models and Causal Reasoning and the papers are innovations from contributors in disciplines not traditionally associated with behavioural sciences, (e. g. computer science with Judea Pearl and public health with James Robins). Also in this section are contriΒ butions by Rod McDonald and Michael Sobel who have a more traditional approach to causal inference, generating from problems in behavioural sciences. The second section encompasses new approaches to questions of model selection with emphasis on factor analysis and time varying systems. Amemiya uses nonlinear factor analysis which has a higher order of complexity associated with the identifiability condiΒ tions. Muthen studies longitudinal hierarchichal models with latent variables and treats the time vector as a variable rather than a level of hierarchy. Deleeuw extends exploratory factor analysis models by including time as a variable and allowing for discrete and ordiΒ nal latent variables. Arminger looks at autoregressive structures and Bock treats factor analysis models for categorical data.
β¦ Table of Contents
Front Matter....Pages i-vii
Embedding common factors in a path model....Pages 1-10
Measurement, Causation and Local Independence in Latent Variable Models....Pages 11-28
On the Identification of Nonparametric Structural Models....Pages 29-68
Causal Inference from Complex Longitudinal Data....Pages 69-117
Models as Instruments, With Applications to Moment Structure Analysis....Pages 119-131
Bias and mean square error of the maximum likelihood estimators of the parameters of the intraclass correlation model....Pages 133-147
Latent Variable Growth Modeling with Multilevel Data....Pages 149-161
High-dimensional Full-information Item Factor Analysis....Pages 163-176
Dynamic Factor Models for the Analysis of Ordered Categorical Panel Data....Pages 177-194
Model fitting procedures for nonlinear factor analysis using the errors-in-variables parameterization....Pages 195-210
Multivariate Regression with Errors in Variables: Issues on Asymptotic Robustness....Pages 211-228
Non-Iterative Fitting of the Direct Product Model for Multitrait-Multimethod Matrices....Pages 229-245
An EM Algorithm for ML Factor Analysis with Missing Data....Pages 247-258
Optimal Conditionally Unbiased Equivariant Factor Score Estimators....Pages 259-281
Back Matter....Pages 283-284
β¦ Subjects
Statistics, general
π SIMILAR VOLUMES
This edited volume features cutting-edge topics from the leading researchers in the areas of latent variable modeling. Content highlights include coverage of approaches dealing with missing values, semi-parametric estimation, robust analysis, hierarchical data, factor scores, multi-group analysis, a
This edited volume features cutting-edge topics from the leading researchers in the areas of latent variable modeling. Content highlights include coverage of approaches dealing with missing values, semi-parametric estimation, robust analysis, hierarchical data, factor scores, multi-group analysis, a
This edited volume features cutting-edge topics from the leading researchers in the areas of latent variable modeling. Content highlights include coverage of approaches dealing with missing values, semi-parametric estimation, robust analysis, hierarchical data, factor scores, multi-group analysis, a
<P>This book provides a comprehensive introduction to latent variable growth curve modeling (LGM) for analyzing repeated measures. It presents the statistical basis for LGM and its various methodological extensions, including a number of practical examples of its use. It is designed to take advantag
<p>Latent variable models are used in many areas of the social and behavioural sciences, and the increasing availability of computer packages for fitting such models is likely to increase their popularity. This book attempts to introduce such models to applied statisticians and research workers inte