Outlier detection has been used extensively in data analysis to detect anomalous observation in data. It has important applications such as in fraud detection and robust analysis, among others. In this paper, we propose a method in detecting multiple outliers in linear functional relationship model for circular variables. Using the residual values of the Caires and Wyatt model, we applied the hierarchical clustering approach. With the use of a tree diagram, we illustrate the detection of outliers graphically. A Monte Carlo simulation study is done to verify the accuracy of the proposed method. Low probability of masking and swamping effects indicate the validity of the proposed approach. Also, the illustrations to two sets of real data are ...
This study focuses on the parameter estimation and outlier detection for some types of the circular ...
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...
Outliers are some observation points outside the usual pattern of the other observations. It is esse...
Outliers are some observation points outside the usual pattern of the other observations. It is esse...
Two agglomerative hierarchical clustering algorithms for identifying multiple outliers in circular r...
The existence of outlier may affect data aberrantly. However, outlier detection problem has been fre...
In this paper we consider the problem of outliers for the functional relationship model of circular ...
This paper presents the identification of outliers in multiple circular regression model (MCRM), whe...
This paper presents the identification of outliers in multiple circular regression model (MCRM), whe...
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...
The existence of outlier may affect data aberrantly. However, outlier detection problem has been fre...
This paper is a comparative study of several algorithms for detecting multiple outliers in circular-...
Outliers are the set of data that are significantly deviates or dissimilar from the rest of the data...
This study focuses on the parameter estimation and outlier detection for some types of the circular ...
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...
Outliers are some observation points outside the usual pattern of the other observations. It is esse...
Outliers are some observation points outside the usual pattern of the other observations. It is esse...
Two agglomerative hierarchical clustering algorithms for identifying multiple outliers in circular r...
The existence of outlier may affect data aberrantly. However, outlier detection problem has been fre...
In this paper we consider the problem of outliers for the functional relationship model of circular ...
This paper presents the identification of outliers in multiple circular regression model (MCRM), whe...
This paper presents the identification of outliers in multiple circular regression model (MCRM), whe...
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...
The existence of outlier may affect data aberrantly. However, outlier detection problem has been fre...
This paper is a comparative study of several algorithms for detecting multiple outliers in circular-...
Outliers are the set of data that are significantly deviates or dissimilar from the rest of the data...
This study focuses on the parameter estimation and outlier detection for some types of the circular ...
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...