Maximum likelihood estimation (MLE) is often used to estimate the parameters of the circular logistic regression model due to its efficiency under a parametric model. However, evidence has shown that the classical MLE extremely affects the parameter estimation in the presence of outliers. This article discusses the effect of outliers on circular logistic regression and extends four robust estimators, namely, Mallows, Schweppe, Bianco and Yohai estimator BY, and weighted BY estimators, to the circular logistic regression model. These estimators have been successfully used in linear logistic regression models for the same purpose. The four proposed robust estimators are compared with the classical MLE through simulation studies. They demonstr...
The problems arising when there are outliers in a data set that follow a circular distribution are c...
The problems arising when there are outliers in a data set that follow a circular distribution are c...
The problems arising when there are outliers in a data set that follow a circular distribution are c...
The Maximum Likelihood Estimator (MLE) was used to estimate unknown parameters of the simple circula...
The univariate and the simple circular regression model can be used in many scientific fields. There...
The problem of robust estimation in circular regression models has not been studied well. This paper...
It is now evident that the estimation of logistic regression parameters, using Maximum LikelihoodEst...
This study focuses on the parameter estimation and outlier detection for some types of the circular ...
This paper considers the relationship between a binary response and a circular predictor. It develop...
This paper considers the relationship between a binary response and a circular predictor. It develop...
Abstract: Background and Objective: The existence of outliers in any type of data influences the eff...
It is very important to make sure that a statistical data is free from outliers before making any ki...
The circular regression model may contain one or more data points which appear to be peculiar or inc...
The investigation on the identification of outliers in linear regression models can be extended to t...
The problems arising when there are outliers in a data set that follow a circular distribution are c...
The problems arising when there are outliers in a data set that follow a circular distribution are c...
The problems arising when there are outliers in a data set that follow a circular distribution are c...
The problems arising when there are outliers in a data set that follow a circular distribution are c...
The Maximum Likelihood Estimator (MLE) was used to estimate unknown parameters of the simple circula...
The univariate and the simple circular regression model can be used in many scientific fields. There...
The problem of robust estimation in circular regression models has not been studied well. This paper...
It is now evident that the estimation of logistic regression parameters, using Maximum LikelihoodEst...
This study focuses on the parameter estimation and outlier detection for some types of the circular ...
This paper considers the relationship between a binary response and a circular predictor. It develop...
This paper considers the relationship between a binary response and a circular predictor. It develop...
Abstract: Background and Objective: The existence of outliers in any type of data influences the eff...
It is very important to make sure that a statistical data is free from outliers before making any ki...
The circular regression model may contain one or more data points which appear to be peculiar or inc...
The investigation on the identification of outliers in linear regression models can be extended to t...
The problems arising when there are outliers in a data set that follow a circular distribution are c...
The problems arising when there are outliers in a data set that follow a circular distribution are c...
The problems arising when there are outliers in a data set that follow a circular distribution are c...
The problems arising when there are outliers in a data set that follow a circular distribution are c...