This study examined the performance of six outlier detection techniques using a non-stationary time series dataset. Two key issues were of interest. Scenario one was the method that could correctly detect the number of outliers introduced into the dataset whiles scenario two was to find the technique that would over detect the number of outliers introduced into the dataset, when a dataset contains only extreme maxima values, extreme minima values or both. Air passenger dataset was used with different outliers or extreme values ranging from 1 to 10 and 40. The six outlier detection techniques used in this study were Mahalanobis distance, depth-based, robust kernel-based outlier factor (RKOF), generalized dispersion, Kth nearest neighbors dis...
Outlier Detection is a technique to detect anomalous events or outliers during analysis of the data ...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
Outlier detection has been used for centuries to detect and, where appropriate, remove anomalous obs...
Methodologies for identifying multivariate outliers are extremely important in statistical analysis....
While methods of detecting outliers is frequently implemented by statisticians when analyzing univar...
Outlier detection refers to the detection of unexpected situations in the data. Outliers are fraud, ...
In this paper, two new outlier generating mechanisms for the detection of outliers in multivariate t...
Outlier (or anomaly) detection is a very broad field which has been studied in the context of a larg...
Data in practice are often of high dimension and multivariate in nature. Detection of outliers has b...
Recent advances in technology have brought major breakthroughs in data collection, enabling a large ...
High-dimensional data can occur in actual cases where the variable p is larger than the number of ob...
Outlier is a data point that deviates too much from the rest of dataset. Most of real-world dataset ...
In multivariate data, outliers are difficult to detect especially when the dimension of the data inc...
Singular spectrum analysis is a powerful non-parametric time series method that applies singular va...
Determining outliers is more complicated in multivariate data sets than it is in univariate cases. T...
Outlier Detection is a technique to detect anomalous events or outliers during analysis of the data ...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
Outlier detection has been used for centuries to detect and, where appropriate, remove anomalous obs...
Methodologies for identifying multivariate outliers are extremely important in statistical analysis....
While methods of detecting outliers is frequently implemented by statisticians when analyzing univar...
Outlier detection refers to the detection of unexpected situations in the data. Outliers are fraud, ...
In this paper, two new outlier generating mechanisms for the detection of outliers in multivariate t...
Outlier (or anomaly) detection is a very broad field which has been studied in the context of a larg...
Data in practice are often of high dimension and multivariate in nature. Detection of outliers has b...
Recent advances in technology have brought major breakthroughs in data collection, enabling a large ...
High-dimensional data can occur in actual cases where the variable p is larger than the number of ob...
Outlier is a data point that deviates too much from the rest of dataset. Most of real-world dataset ...
In multivariate data, outliers are difficult to detect especially when the dimension of the data inc...
Singular spectrum analysis is a powerful non-parametric time series method that applies singular va...
Determining outliers is more complicated in multivariate data sets than it is in univariate cases. T...
Outlier Detection is a technique to detect anomalous events or outliers during analysis of the data ...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
Outlier detection has been used for centuries to detect and, where appropriate, remove anomalous obs...