Multiple logistic regression is a methodology of handling dependent variables with a binary outcome. This method is becoming increasingly widespread as a statistical technique that represents a discrete probability model. Many studies have focused on the application but less on the methodology building. This study aims to provide an applied method for multiple logistic regression which is called modified Bayesian logistic regression modeling as an alternative technique for logistic regression analysis that focuses on a combination of the bootstrap method using SAS macro and weighted techniques based on variances using SAS algorithm. Data on oral cancer were applied to illustrate a real scenario of oral health data. This data will be applied...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
In this paper we propose a new weighted bootstrap with probability (WBP). The basic idea of the prop...
The classical bootstrap method should be used with caution in binary logistic regression model since...
Multiple logistic regression is a methodology of handling dependent variables with a binary outcome....
Multiple logistic regression is a methodology of handling dependent variables with a binary outcome....
(MLR) is the most common type of linear regression analysis. Current technology advancement and incr...
Bayesian methods have been found to have clear utility in epide-miologic analyses involving sparse-d...
INTRODUCTION:Reproducible research is increasingly gaining interest in the research community. Autom...
Logistic regression is widely used in analysis of categorical data especially data with variables th...
Genetic variants in genome-wide association studies (GWAS) are tested for disease association mostly...
This paper supplied an alternative method for exponential growth modeling as a technique for regress...
When the data come from a survey with weights, working with logistic regression models often involve...
Logistic regression is the standard method for assessing predictors of diseases. In logistic regress...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
Abstract. This paper focuses on regression with binomial response data. In these cases logit regress...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
In this paper we propose a new weighted bootstrap with probability (WBP). The basic idea of the prop...
The classical bootstrap method should be used with caution in binary logistic regression model since...
Multiple logistic regression is a methodology of handling dependent variables with a binary outcome....
Multiple logistic regression is a methodology of handling dependent variables with a binary outcome....
(MLR) is the most common type of linear regression analysis. Current technology advancement and incr...
Bayesian methods have been found to have clear utility in epide-miologic analyses involving sparse-d...
INTRODUCTION:Reproducible research is increasingly gaining interest in the research community. Autom...
Logistic regression is widely used in analysis of categorical data especially data with variables th...
Genetic variants in genome-wide association studies (GWAS) are tested for disease association mostly...
This paper supplied an alternative method for exponential growth modeling as a technique for regress...
When the data come from a survey with weights, working with logistic regression models often involve...
Logistic regression is the standard method for assessing predictors of diseases. In logistic regress...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
Abstract. This paper focuses on regression with binomial response data. In these cases logit regress...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
In this paper we propose a new weighted bootstrap with probability (WBP). The basic idea of the prop...
The classical bootstrap method should be used with caution in binary logistic regression model since...