Logistic regression is a statistical method which allows an investigator to 'explain' or 'predict' a binary response variable from a set of independent variables. In particular, it may be used to classify persons for example, as diseased or healthy, high risk or low risk etc. (logistic discrimination). During recent years this method has been of increasing interest and importance in dentistry. Since this demanding statistical method may not be easily accessible to dentists, a description is provided of its basic characteristics in an introductory and condensed form. A worked example, 'identification of children with high caries risk', is presented in order to demonstrate the application and use of the method. Following the presentation of t...
The curves represent the average curves for the 20 ANN and 20 logistic models. The area under the RO...
<p>First model (-∙-) includes standing bouts (AUC = 0.81), second model (─) includes walking speed<s...
<p>Logistic regression determining predictors of poor oral hygiene in a sample of 983 children.</p
Multivariate analysis with binary response is extensively utilized in dental research due to variati...
The evaluation of fitted binary logistic regression model is very important in assessing the appropr...
Logistic regression is often used to find a linear combination of covariates which best discriminate...
Logistic discrimination is a well established method for allocating observations to one of two or mo...
We try receiver operating characteristic(ROC) curves by neural networks of logistic function. The mo...
Logistic regression analysis to assess connection between edentulous patients and disability.</p
Logistic regression analysis for association between disability and dental caries.</p
This text offers an introduction to binary logistic regression, a confirmatory technique for statist...
SIGLEAvailable from British Library Document Supply Centre-DSC:DXN014460 / BLDSC - British Library D...
The aim of the research is to find the best performance both of logistic regression and linear discr...
<p>Receiver Operating Characteristic curve (ROC) curve associated with the logistic regression model...
<p>Receiver operating characteristics (ROC) curve analysis of binary logistic regression models, usi...
The curves represent the average curves for the 20 ANN and 20 logistic models. The area under the RO...
<p>First model (-∙-) includes standing bouts (AUC = 0.81), second model (─) includes walking speed<s...
<p>Logistic regression determining predictors of poor oral hygiene in a sample of 983 children.</p
Multivariate analysis with binary response is extensively utilized in dental research due to variati...
The evaluation of fitted binary logistic regression model is very important in assessing the appropr...
Logistic regression is often used to find a linear combination of covariates which best discriminate...
Logistic discrimination is a well established method for allocating observations to one of two or mo...
We try receiver operating characteristic(ROC) curves by neural networks of logistic function. The mo...
Logistic regression analysis to assess connection between edentulous patients and disability.</p
Logistic regression analysis for association between disability and dental caries.</p
This text offers an introduction to binary logistic regression, a confirmatory technique for statist...
SIGLEAvailable from British Library Document Supply Centre-DSC:DXN014460 / BLDSC - British Library D...
The aim of the research is to find the best performance both of logistic regression and linear discr...
<p>Receiver Operating Characteristic curve (ROC) curve associated with the logistic regression model...
<p>Receiver operating characteristics (ROC) curve analysis of binary logistic regression models, usi...
The curves represent the average curves for the 20 ANN and 20 logistic models. The area under the RO...
<p>First model (-∙-) includes standing bouts (AUC = 0.81), second model (─) includes walking speed<s...
<p>Logistic regression determining predictors of poor oral hygiene in a sample of 983 children.</p