The logistic regression models has been widely used in the social and natural sciences and results from studies using this model can have significant impact. Thus, confidence in the reliability of inferences drawn from these models is essential. The robustness of such inferences is dependent on sample size. The purpose of this study is to examine the impact of sample size on the mean estimated bias and efficiency of parameter estimation and inference for the logistic regression model. A number of simulations are conducted examining the impact of sample size, nonlinear predictors, and multicollinearity on substantive inferences (e.g. odds ratios, marginal effects) and goodness of fit (e.g. pseudo-R2, predictability) of logistic regression m...
Users of logistic regression models often need to describe the overall predictive strength, or effec...
In this paper, we used simulations to compare the performance of classical and Bayesian estimations ...
Educational researchers, psychologists, social, epidemiological and medical scientists are often dea...
The logistic regression models has been widely used in the social and natural sciences and results f...
The types of covariate and sample size may influence many statistical methods. This study involves a...
We employed random-x bootstrap in binary logistic regression model. We investigate the effect of sam...
Sample size guidelines for binary outcome multilevel models are rare, despite well-established rules...
In psychological research, the use of log-linear and logit analyses may be problematic due to the oc...
Multinomial Logistic Regression (MLR) has been advocated for developing clinical prediction models t...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...
While consequences of unobserved heterogeneity such as biased estimates of binary response regressio...
This article considers the different methods for determining sample sizes for Wald, likelihood ratio...
This study investigated the small sample biasness of the ordered logit model parameters under multic...
Abstract Background Many studies conducted in health ...
Users of logistic regression models often need to describe the overall predictive strength, or effec...
In this paper, we used simulations to compare the performance of classical and Bayesian estimations ...
Educational researchers, psychologists, social, epidemiological and medical scientists are often dea...
The logistic regression models has been widely used in the social and natural sciences and results f...
The types of covariate and sample size may influence many statistical methods. This study involves a...
We employed random-x bootstrap in binary logistic regression model. We investigate the effect of sam...
Sample size guidelines for binary outcome multilevel models are rare, despite well-established rules...
In psychological research, the use of log-linear and logit analyses may be problematic due to the oc...
Multinomial Logistic Regression (MLR) has been advocated for developing clinical prediction models t...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...
While consequences of unobserved heterogeneity such as biased estimates of binary response regressio...
This article considers the different methods for determining sample sizes for Wald, likelihood ratio...
This study investigated the small sample biasness of the ordered logit model parameters under multic...
Abstract Background Many studies conducted in health ...
Users of logistic regression models often need to describe the overall predictive strength, or effec...
In this paper, we used simulations to compare the performance of classical and Bayesian estimations ...
Educational researchers, psychologists, social, epidemiological and medical scientists are often dea...