The investigation on the identification of outliers in linear regression models can be extended to those for circular regression case. In this paper, we propose a new numerical statistic called mean circular error to identify possible outliers in circular regression models by using a row deletion approach. Through intensive simulation studies, the cut-off points of the statistic are obtained and its power of performance investigated.It is found that the performance improves as the concentration parameter of circular residuals becomes larger or the sample size becomes smaller. As an illustration, the statistic is applied to a wind direction data set
The existence of outlier may affect data aberrantly. However, outlier detection problem has been fre...
The univariate and the simple circular regression model can be used in many scientific fields. There...
The existence of outlier may affect data aberrantly. However, outlier detection problem has been fre...
A number of circular regression models have been proposed in the literature. In recent years, there ...
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...
This study focuses on the parameter estimation and outlier detection for some types of the circular ...
In this article, we model the relationship between two circular variables using the circular regress...
This paper presents the identification of outliers in multiple circular regression model (MCRM), whe...
Recently, there is strong interest on the subject of outlier problem in circular data. In this paper...
This paper presents the identification of outliers in multiple circular regression model (MCRM), whe...
Abstract: Background and Objective: The existence of outliers in any type of data influences the eff...
This study looks at three problems related to the JS circular regression model with five objectives ...
It is very important to make sure that a statistical data is free from outliers before making any ki...
A cylindrical data set consists of a circular and a linear variables. Few distributions have been p...
The existence of outlier may affect data aberrantly. However, outlier detection problem has been fre...
The univariate and the simple circular regression model can be used in many scientific fields. There...
The existence of outlier may affect data aberrantly. However, outlier detection problem has been fre...
A number of circular regression models have been proposed in the literature. In recent years, there ...
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...
This study focuses on the parameter estimation and outlier detection for some types of the circular ...
In this article, we model the relationship between two circular variables using the circular regress...
This paper presents the identification of outliers in multiple circular regression model (MCRM), whe...
Recently, there is strong interest on the subject of outlier problem in circular data. In this paper...
This paper presents the identification of outliers in multiple circular regression model (MCRM), whe...
Abstract: Background and Objective: The existence of outliers in any type of data influences the eff...
This study looks at three problems related to the JS circular regression model with five objectives ...
It is very important to make sure that a statistical data is free from outliers before making any ki...
A cylindrical data set consists of a circular and a linear variables. Few distributions have been p...
The existence of outlier may affect data aberrantly. However, outlier detection problem has been fre...
The univariate and the simple circular regression model can be used in many scientific fields. There...
The existence of outlier may affect data aberrantly. However, outlier detection problem has been fre...