In multilevel regression models for observational clustered data, regressors can be correlated with cluster-level error components, namely endogenous, due to omitted cluster-level covariates, measurement error, and simultaneity. When endogeneity is ignored, regression coefficient estimators can be severely biased. To deal with endogeneity, instrument variable methods have been widely used. However, the instrument variable method often requires external instrument variables with certain conditions that cannot be verified empirically. Methods that use the within-cluster variations of the endogenous variable work under the restriction that either the outcome or the endogenous variable has a linear relationship with the cluster-level random eff...
In hierarchical data structures, observational units at one level are nested within units at other l...
Abstract In psychometrics, the canonical use of conditional likelihoods is for the Rasch model in me...
In assessing the efficacy of a time-varying treatment Marginal Structural Models (MSMs) and Structur...
This article discusses estimation of multilevel/hierarchical linear models that include cluster-leve...
Multilevel data occur frequently in health services, population and public health, and epidemiologic...
Entities such as individuals, teams, or organizations can vary systematically from one another. Res...
We propose and compare two approaches for regression analysis of multilevel binary data when cluster...
When using linear models for cluster-correlated or longitudinal data, a common modeling practice is ...
The objectives of this paper are (1) to review methods that can be used to test for different types ...
Many statistical analyses are performed by means of a regression model. These models investigate the...
Entities such as individuals, teams, or organizations can vary systematically from one another. Rese...
Entities such as individuals, teams, or organizations can vary systematically from one another. Rese...
Abstract Background Clustering of observations is a common phenomenon in epidemiological and clinica...
In psychometrics, the canonical use of conditional likelihoods is for the Rasch model in measurement...
We propose two new methods for estimating models with nonseparable errors and endogenous regressors....
In hierarchical data structures, observational units at one level are nested within units at other l...
Abstract In psychometrics, the canonical use of conditional likelihoods is for the Rasch model in me...
In assessing the efficacy of a time-varying treatment Marginal Structural Models (MSMs) and Structur...
This article discusses estimation of multilevel/hierarchical linear models that include cluster-leve...
Multilevel data occur frequently in health services, population and public health, and epidemiologic...
Entities such as individuals, teams, or organizations can vary systematically from one another. Res...
We propose and compare two approaches for regression analysis of multilevel binary data when cluster...
When using linear models for cluster-correlated or longitudinal data, a common modeling practice is ...
The objectives of this paper are (1) to review methods that can be used to test for different types ...
Many statistical analyses are performed by means of a regression model. These models investigate the...
Entities such as individuals, teams, or organizations can vary systematically from one another. Rese...
Entities such as individuals, teams, or organizations can vary systematically from one another. Rese...
Abstract Background Clustering of observations is a common phenomenon in epidemiological and clinica...
In psychometrics, the canonical use of conditional likelihoods is for the Rasch model in measurement...
We propose two new methods for estimating models with nonseparable errors and endogenous regressors....
In hierarchical data structures, observational units at one level are nested within units at other l...
Abstract In psychometrics, the canonical use of conditional likelihoods is for the Rasch model in me...
In assessing the efficacy of a time-varying treatment Marginal Structural Models (MSMs) and Structur...