This article illustrates the use of structural equation modeling (SEM) procedures with latent variables to analyze data from experimental studies. These procedures allow the researcher to remove the biasing effects of random and correlated measurement error on the outcomes of the experiment and to examine processes that may account for changes in the outcome variables that are observed. Analyses of data from a Project Family study, an experimental intervention project with rural families that strives to improve parenting skills, are presented to illustrate the use of these modeling procedures. Issues that arise in applying SEM procedures, such as sample size and distributional characteristics of the measures, are discussed
Petrinovich highlighted many salient issues in the behavioral and social sciences that are of concer...
Survey data in social, behavioral, and health sciences often contain many variables (p). Structural ...
Structural Equation Model (SEM) is a combination of two separate statistical methods, namely factor ...
Structural Equation Modeling (SEM) is widely used in behavioural, social and eco-nomic studies to an...
Quantifying behavior often involves using variables that contain measurement errors and formulating ...
This article gives an overview of statistical analysis with latent variables. Us-ing traditional str...
Structural equation models (SEMs) have been discussed extensively in the psychometrics and quantitat...
A researcher mostly needs some statistical technique for the interpretation of the data at hand. Thi...
Structural equation modeling is a statistical analysis technique used to analyse structural relation...
Structural Equation Modeling for SEM is second generation statistical analysis techniques for analyz...
Abstract. Structural equation modeling (SEM) provides a dependable framework for testing differences...
Structural equation modeling (SEM) is a tool for analyzing multivariate data that has been long know...
Designed for students and researchers without an extensive quantitative background, this book offers...
A large segment of management research in recent years has used structural equation modeling (SEM) a...
Abstract Background Structural equation modeling (SEM) is a set of statistical techniques used to me...
Petrinovich highlighted many salient issues in the behavioral and social sciences that are of concer...
Survey data in social, behavioral, and health sciences often contain many variables (p). Structural ...
Structural Equation Model (SEM) is a combination of two separate statistical methods, namely factor ...
Structural Equation Modeling (SEM) is widely used in behavioural, social and eco-nomic studies to an...
Quantifying behavior often involves using variables that contain measurement errors and formulating ...
This article gives an overview of statistical analysis with latent variables. Us-ing traditional str...
Structural equation models (SEMs) have been discussed extensively in the psychometrics and quantitat...
A researcher mostly needs some statistical technique for the interpretation of the data at hand. Thi...
Structural equation modeling is a statistical analysis technique used to analyse structural relation...
Structural Equation Modeling for SEM is second generation statistical analysis techniques for analyz...
Abstract. Structural equation modeling (SEM) provides a dependable framework for testing differences...
Structural equation modeling (SEM) is a tool for analyzing multivariate data that has been long know...
Designed for students and researchers without an extensive quantitative background, this book offers...
A large segment of management research in recent years has used structural equation modeling (SEM) a...
Abstract Background Structural equation modeling (SEM) is a set of statistical techniques used to me...
Petrinovich highlighted many salient issues in the behavioral and social sciences that are of concer...
Survey data in social, behavioral, and health sciences often contain many variables (p). Structural ...
Structural Equation Model (SEM) is a combination of two separate statistical methods, namely factor ...