This paper is a comparative study of several algorithms for detecting multiple outliers in circular-circular regression model based on the clustering algorithms. Three measures of similarity based on the circular distance were used to obtain a cluster tree using the agglomerative hierarchical methods. A stopping rule for the cluster tree based on the mean direction and circular standard deviation of the tree height was used as the cutoff point and classifier to the cluster group that exceeded the stopping rule as potential outliers. The performances of the algorithms have been demonstrated using the simulation studies that consider several outlier scenarios with a certain degree of contamination. Application to real data using wind da...
The investigation on the identification of outliers in linear regression models can be extended to t...
Clustering algorithms can be used to create an outlier detection procedure in univariate circular da...
The circular regression model may contain one or more data points which appear to be peculiar or inc...
This paper is a comparative study of several algorithms for detecting multiple outliers in circular-...
Outlier detection in linear data sets has been done vigorously but only a small amount of work has b...
Outliers are the set of data that are significantly deviates or dissimilar from the rest of the data...
Recently, there is strong interest on the subject of outlier problem in circular data. In this paper...
The existence of outliers in circular-circular regression model can lead to many errors, for example...
Single-linkage is one of the algorithms in agglomerative clustering technique that can be used to de...
Two agglomerative hierarchical clustering algorithms for identifying multiple outliers in circular r...
This study focuses on the parameter estimation and outlier detection for some types of the circular ...
It is very important to make sure that a statistical data is free from outliers before making any ki...
The existence of outliers in a circular regression model can lead to many errors, for example in inf...
Abstract: Background and Objective: The existence of outliers in any type of data influences the eff...
A cylindrical data set consists of circular and linear variables. We focus on developing an outlier ...
The investigation on the identification of outliers in linear regression models can be extended to t...
Clustering algorithms can be used to create an outlier detection procedure in univariate circular da...
The circular regression model may contain one or more data points which appear to be peculiar or inc...
This paper is a comparative study of several algorithms for detecting multiple outliers in circular-...
Outlier detection in linear data sets has been done vigorously but only a small amount of work has b...
Outliers are the set of data that are significantly deviates or dissimilar from the rest of the data...
Recently, there is strong interest on the subject of outlier problem in circular data. In this paper...
The existence of outliers in circular-circular regression model can lead to many errors, for example...
Single-linkage is one of the algorithms in agglomerative clustering technique that can be used to de...
Two agglomerative hierarchical clustering algorithms for identifying multiple outliers in circular r...
This study focuses on the parameter estimation and outlier detection for some types of the circular ...
It is very important to make sure that a statistical data is free from outliers before making any ki...
The existence of outliers in a circular regression model can lead to many errors, for example in inf...
Abstract: Background and Objective: The existence of outliers in any type of data influences the eff...
A cylindrical data set consists of circular and linear variables. We focus on developing an outlier ...
The investigation on the identification of outliers in linear regression models can be extended to t...
Clustering algorithms can be used to create an outlier detection procedure in univariate circular da...
The circular regression model may contain one or more data points which appear to be peculiar or inc...