This chapter provides models for repeated measures and multivariate data. It also introduces structural equation models and provides a description of simple multilevel models for data from populations with a two-level hierarchical structure. An analysis of variance (ANOVA) or fixed effects model is a way of allowing for school effects, which involves explanatory variables as a set of dummy variables that indicate the school to which a student belongs. While ANOVA can also be used to compare any number of schools, the random effects approach has a number of advantages over fixed effects models. First, if there are J schools to be compared, then J−1 parameters are required to capture school effects, and therefore, if J is large, a large numbe...
__Abstract__ In this chapter, a concise overview is provided for the statistical techniques that ...
Key words: hierarchical linear model, multilevel research, sample design The hierarchical linear mod...
Abstract Purpose This paper aims to discuss multilevel modeling for longitudinal data, clarifying ...
This chapter provides models for repeated measures and multivariate data. It also introduces structu...
This chapter provides models for repeated measures and multivariate data. It also introduces structu...
This chapter provides models for repeated measures and multivariate data. It also introduces structu...
This book provides a clear introduction to this important area of statistics. The author provides a ...
Although common in the educational and developmental areas, multilevel models are not often utilized...
Although common in the educational and developmental areas, multilevel models are not often utilized...
A general model is developed for the analysis of multivariate multilevel data structures. Special ca...
within schools, voters within districts, or workers within firms, to name a few exam-ples. Statistic...
Mayer A, Nagengast B, Fletcher J, Steyer R. Analyzing average and conditional effects with multigrou...
In this thesis we presented methods and procedures to test and account for measurement bias in multi...
Conventionally, multilevel analysis of covariance (ML-ANCOVA) has been the recommended approach for ...
Conventionally, multilevel analysis of covariance (ML-ANCOVA) has been the recommended approach for ...
__Abstract__ In this chapter, a concise overview is provided for the statistical techniques that ...
Key words: hierarchical linear model, multilevel research, sample design The hierarchical linear mod...
Abstract Purpose This paper aims to discuss multilevel modeling for longitudinal data, clarifying ...
This chapter provides models for repeated measures and multivariate data. It also introduces structu...
This chapter provides models for repeated measures and multivariate data. It also introduces structu...
This chapter provides models for repeated measures and multivariate data. It also introduces structu...
This book provides a clear introduction to this important area of statistics. The author provides a ...
Although common in the educational and developmental areas, multilevel models are not often utilized...
Although common in the educational and developmental areas, multilevel models are not often utilized...
A general model is developed for the analysis of multivariate multilevel data structures. Special ca...
within schools, voters within districts, or workers within firms, to name a few exam-ples. Statistic...
Mayer A, Nagengast B, Fletcher J, Steyer R. Analyzing average and conditional effects with multigrou...
In this thesis we presented methods and procedures to test and account for measurement bias in multi...
Conventionally, multilevel analysis of covariance (ML-ANCOVA) has been the recommended approach for ...
Conventionally, multilevel analysis of covariance (ML-ANCOVA) has been the recommended approach for ...
__Abstract__ In this chapter, a concise overview is provided for the statistical techniques that ...
Key words: hierarchical linear model, multilevel research, sample design The hierarchical linear mod...
Abstract Purpose This paper aims to discuss multilevel modeling for longitudinal data, clarifying ...