Maximum likelihood estimates (MLE) of regression parameters in the generalized linear models (GLM) are biased and their bias is non negligible when sample size is small. This study focuses on the GLM with binary data with multiple observations on response for each predictor value when sample size is small. The performance of the estimation methods in Cordeiro and McCullagh (1991), Firth (1993) and Pardo et al. (2005) are compared for GLM with binary data using an extensive Monte Carlo simulation study. Performance of these methods for three real data sets is also compared
Maximum likelihood estimation in logistic regression with mixed effects is known to often result in ...
In this thesis we develop a method for efficient model building in nonlinear members of the GLM fami...
In small samples, maximum likelihood (ML) estimates of logit model coefficients have substantial bia...
Maximum likelihood estimates (MLE) of regression parameters in the generalized linear models (GLM) a...
Typically, small samples have always been a problem for binomial generalized linear models. Though g...
Typically, small samples have always been a problem for binomial generalized linear models. Though g...
Generalized linear mixed models (GLMMs) have been widely used for the modelling of longitudinal and ...
Generalized Linear Models (GLM's) are utilized in a variety of statistical applications. Many times ...
In small samples it is well known that the standard methods for estimating variance components in a ...
Fitting multilevel models to discrete outcome data is problematic because the discrete distribution...
In small samples it is well known that the standard methods for estimating variance components in a ...
Many studies in epidemiology and other fields such as econometrics and social sciences give rise to ...
summary:The paper investigates generalized linear models (GLM's) with binary responses such as the l...
When covariates in Longitudinal data are subject to errors, the naive estimates of the model parame...
Misspecification tests for Multinomial Logit [MNL] models are known to have low power or large size ...
Maximum likelihood estimation in logistic regression with mixed effects is known to often result in ...
In this thesis we develop a method for efficient model building in nonlinear members of the GLM fami...
In small samples, maximum likelihood (ML) estimates of logit model coefficients have substantial bia...
Maximum likelihood estimates (MLE) of regression parameters in the generalized linear models (GLM) a...
Typically, small samples have always been a problem for binomial generalized linear models. Though g...
Typically, small samples have always been a problem for binomial generalized linear models. Though g...
Generalized linear mixed models (GLMMs) have been widely used for the modelling of longitudinal and ...
Generalized Linear Models (GLM's) are utilized in a variety of statistical applications. Many times ...
In small samples it is well known that the standard methods for estimating variance components in a ...
Fitting multilevel models to discrete outcome data is problematic because the discrete distribution...
In small samples it is well known that the standard methods for estimating variance components in a ...
Many studies in epidemiology and other fields such as econometrics and social sciences give rise to ...
summary:The paper investigates generalized linear models (GLM's) with binary responses such as the l...
When covariates in Longitudinal data are subject to errors, the naive estimates of the model parame...
Misspecification tests for Multinomial Logit [MNL] models are known to have low power or large size ...
Maximum likelihood estimation in logistic regression with mixed effects is known to often result in ...
In this thesis we develop a method for efficient model building in nonlinear members of the GLM fami...
In small samples, maximum likelihood (ML) estimates of logit model coefficients have substantial bia...