Abstract Outlier detection is an important problem that has applications in many fields. High dimensional datasets are common in such applications. Among the existing outlier detection methods, Distance-Based outlier (DB-Outlier) detection is one of the most generalizable and simplest approaches. It finds outliers by calculating distances between data points. However, in high dimensional space, data distribution is sparse, so every data point becomes a good outlier candidate. It has been shown that meaningful outliers are likely to be identified by exam-ining the behavior of the data in low dimensional projections. On the other hand, Example-Based outlier detection method is promising in discovering the hidden user view of outliers. In this...
Outlier detection has been studied extensively in data mining. However, as the emergence of huge dat...
Detecting outliers in high dimensional datasets is quite a difficult data mining task. Mining outlie...
In high dimensional data large no of outliers are embedded in low dimensional subspaces known as pro...
Abstract Outlier detection is a popular technique that can be utilized in many modern applications l...
Outlier detection is a fundamental step in knowledge discovery in databases. With the increasing num...
Outliers detection is currently very active area of research in data set mining community. Outliers ...
This paper deals with finding outliers (exceptions) in large, multidimensional datasets. The identif...
Abstract. The outlier detection problem has important applications in the field of fraud detection, ...
Detecting outliers from high-dimensional data is a challenge task since outliers mainly reside in v...
The outlier detection problem has important applications in the eld of fraud detection, network robu...
Abstract. We propose an original outlier detection schema that detects outliers in varying subspaces...
Our thesis is that we can efficiently identify meaningful outliers in large, multidimensional datas...
The outlier detection problem has important applications in the eld of fraud detection, netw ork rob...
Our thesis is that we can efficiently identify meaningful outliers in large, multidimensional datas...
This paper studies the difficulties of outlier detection on inexact data. We study the normal instan...
Outlier detection has been studied extensively in data mining. However, as the emergence of huge dat...
Detecting outliers in high dimensional datasets is quite a difficult data mining task. Mining outlie...
In high dimensional data large no of outliers are embedded in low dimensional subspaces known as pro...
Abstract Outlier detection is a popular technique that can be utilized in many modern applications l...
Outlier detection is a fundamental step in knowledge discovery in databases. With the increasing num...
Outliers detection is currently very active area of research in data set mining community. Outliers ...
This paper deals with finding outliers (exceptions) in large, multidimensional datasets. The identif...
Abstract. The outlier detection problem has important applications in the field of fraud detection, ...
Detecting outliers from high-dimensional data is a challenge task since outliers mainly reside in v...
The outlier detection problem has important applications in the eld of fraud detection, network robu...
Abstract. We propose an original outlier detection schema that detects outliers in varying subspaces...
Our thesis is that we can efficiently identify meaningful outliers in large, multidimensional datas...
The outlier detection problem has important applications in the eld of fraud detection, netw ork rob...
Our thesis is that we can efficiently identify meaningful outliers in large, multidimensional datas...
This paper studies the difficulties of outlier detection on inexact data. We study the normal instan...
Outlier detection has been studied extensively in data mining. However, as the emergence of huge dat...
Detecting outliers in high dimensional datasets is quite a difficult data mining task. Mining outlie...
In high dimensional data large no of outliers are embedded in low dimensional subspaces known as pro...