Violation of correct specification may cause some undesirable results such as biased logistic regression coefficients and less efficient test statistics. In this paper, asymptotic relative efficiency (ARE) of various coefficients of determination in misspecified binary logistic regression models is investigated. Seven types of misspecification have been included. ARE of test statistics for exponential and Weibull distributions as a method of calculating optimal cutpoints is derived to demonstrate misspecification. Theoretical relationships between coefficients of determination have also been analyzed. Extensive simulations using bootstrap method and a real data application reveal more efficient one under various modeling scenarios
Logistic regression is frequently used for classifying observations into two groups. Unfortunately t...
Objectives. This paper seeks to assess the effect on statistical power of regression model misspecif...
We propose a framework for estimation and inference when the model may be misspecified. We rely on a...
Misspecifying an explanatory variable is a common problem in logistic regression as it is for all me...
A commonly used method for confounder selection is to determine the percent difference between the c...
In this paper robustness properties of the maximum likelihood estimator (MLE) and several robust est...
Bootstrap tests are tests for which the significance level is calculated using some variant of the b...
Under the linear logistic test model, a weight is assigned to each cognitive operation used to respo...
This article presents and applies conditional moment tests for detecting misspecification in a censo...
Under the linear logistic test model, a weight is assigned to each cognitive operation used to res...
A simple test is proposed for examining the correctness of a response function against unspecified g...
We propose a framework for estimation and inference when the model may be misspecified. We rely on a...
Bootstrap tests are tests for which the signicance level is calculated using some variant of the boo...
We propose a framework for estimation and inference when the model may be misspecified. We rely on a...
This paper introduces and applies the bootstrap method to compare the power of the test for asymmetr...
Logistic regression is frequently used for classifying observations into two groups. Unfortunately t...
Objectives. This paper seeks to assess the effect on statistical power of regression model misspecif...
We propose a framework for estimation and inference when the model may be misspecified. We rely on a...
Misspecifying an explanatory variable is a common problem in logistic regression as it is for all me...
A commonly used method for confounder selection is to determine the percent difference between the c...
In this paper robustness properties of the maximum likelihood estimator (MLE) and several robust est...
Bootstrap tests are tests for which the significance level is calculated using some variant of the b...
Under the linear logistic test model, a weight is assigned to each cognitive operation used to respo...
This article presents and applies conditional moment tests for detecting misspecification in a censo...
Under the linear logistic test model, a weight is assigned to each cognitive operation used to res...
A simple test is proposed for examining the correctness of a response function against unspecified g...
We propose a framework for estimation and inference when the model may be misspecified. We rely on a...
Bootstrap tests are tests for which the signicance level is calculated using some variant of the boo...
We propose a framework for estimation and inference when the model may be misspecified. We rely on a...
This paper introduces and applies the bootstrap method to compare the power of the test for asymmetr...
Logistic regression is frequently used for classifying observations into two groups. Unfortunately t...
Objectives. This paper seeks to assess the effect on statistical power of regression model misspecif...
We propose a framework for estimation and inference when the model may be misspecified. We rely on a...