The evaluation of fitted binary logistic regression model is very important in assessing the appropriateness of a model for specific purposes. The study proposes to assess the discriminatory performance of a binary logistic regression model to correctly classify between the cases and non-cases. The discriminatory performance of binary logistic regression model is measured using two approaches. The first approach is the use of fitted binary logistic regression model to correctly predict the subjects that are cases and non-cases, with the help of the parameters sensitivity and specificity. The alternative approach is based on receiver operating characteristic (ROC) curve for the fitted binary logistic regression model and then determining the...
In logistic regression, before concluding that the model fits well, it is crucial that other measure...
OBJECTIVES: This paper is concerned with checking goodness-of-fit of binary logistic regression mode...
Logistic Regression, being both a predictive and an explanatory method, is one of the most commonly ...
The evaluation of fitted binary logistic regression model is very important in assessing the appropr...
Logistic regression is a sophisticated statistical tool for data analysis in both control experiment...
Historically, logistic regression has been the standard for binary response classification in biomet...
Application of logistic regression modeling techniques without subsequent performance analysis regar...
Assessment of the quality of the logistic regression model is central to the conclusion. Application...
The aim of the research is to find the best performance both of logistic regression and linear discr...
Logistic regression is a statistical method which allows an investigator to 'explain' or 'predict' a...
Working Paper- please do not cite without expressed written permission from the authors. In this pap...
Abstract: – Assessment of the quality of the logistic regression model is central to the conclusion...
We give a brief overview over common performance measures for binary classification. We cover sensit...
Through simulation studies, statistical methods were evaluated and methodological recommendations we...
Two of the most widely used statistical methods for analyzing categorical outcome variables are line...
In logistic regression, before concluding that the model fits well, it is crucial that other measure...
OBJECTIVES: This paper is concerned with checking goodness-of-fit of binary logistic regression mode...
Logistic Regression, being both a predictive and an explanatory method, is one of the most commonly ...
The evaluation of fitted binary logistic regression model is very important in assessing the appropr...
Logistic regression is a sophisticated statistical tool for data analysis in both control experiment...
Historically, logistic regression has been the standard for binary response classification in biomet...
Application of logistic regression modeling techniques without subsequent performance analysis regar...
Assessment of the quality of the logistic regression model is central to the conclusion. Application...
The aim of the research is to find the best performance both of logistic regression and linear discr...
Logistic regression is a statistical method which allows an investigator to 'explain' or 'predict' a...
Working Paper- please do not cite without expressed written permission from the authors. In this pap...
Abstract: – Assessment of the quality of the logistic regression model is central to the conclusion...
We give a brief overview over common performance measures for binary classification. We cover sensit...
Through simulation studies, statistical methods were evaluated and methodological recommendations we...
Two of the most widely used statistical methods for analyzing categorical outcome variables are line...
In logistic regression, before concluding that the model fits well, it is crucial that other measure...
OBJECTIVES: This paper is concerned with checking goodness-of-fit of binary logistic regression mode...
Logistic Regression, being both a predictive and an explanatory method, is one of the most commonly ...