Detecting outliers in high dimensional datasets is quite a difficult data mining task. Mining outliers in subspaces seems to be a promising solution, because outliers may be embedded in some interesting subspaces. Due to the existence of many irrelevant dimensions in high dimensional datasets, it is of great importance to eliminate the irrelevant or unimportant dimensions and identify outliers in interesting subspaces with strong correlation. Normally, the correlation among dimensions can be determined by traditional feature selection techniques and subspace-based clustering methods. The dimension-growth subspace clustering techniques find interesting subspaces in relatively lower possible dimension space, while dimension-growth approaches ...
Outlier detection is a fundamental step in knowledge discovery in databases. With the increasing num...
Many data mining algorithms focus on clustering methods. There are also a lot of approaches designed...
Abstract. The outlier detection problem has important applications in the field of fraud detection, ...
Abstract Subspace outlier detection has emerged as a practical approach for outlier detection. Class...
Outliers detection is currently very active area of research in data set mining community. Outliers ...
Many real applications are required to detect outliers in high dimensional data sets. The major diff...
In many data mining application domain outlier detection is an important task, it can be regard as a...
Abstract. We propose an original outlier detection schema that detects outliers in varying subspaces...
Detecting outlier efficiently is an active research issue in data mining, which has important applic...
Detecting outliers from high-dimensional data is a challenge task since outliers mainly reside in v...
The questions brought by high dimensional data is interesting and challenging. Our study is targetin...
In many real world applications data is collected in multi-dimensional spaces, with the knowledge hi...
In this paper, we introduce a bottom-up approach to discover clusters of outliers in any m-dimension...
Abstract Outlier detection is an important problem that has applications in many fields. High dimens...
Abstract — High Dimensional data is need of world as social networking sites, biomedical data, sport...
Outlier detection is a fundamental step in knowledge discovery in databases. With the increasing num...
Many data mining algorithms focus on clustering methods. There are also a lot of approaches designed...
Abstract. The outlier detection problem has important applications in the field of fraud detection, ...
Abstract Subspace outlier detection has emerged as a practical approach for outlier detection. Class...
Outliers detection is currently very active area of research in data set mining community. Outliers ...
Many real applications are required to detect outliers in high dimensional data sets. The major diff...
In many data mining application domain outlier detection is an important task, it can be regard as a...
Abstract. We propose an original outlier detection schema that detects outliers in varying subspaces...
Detecting outlier efficiently is an active research issue in data mining, which has important applic...
Detecting outliers from high-dimensional data is a challenge task since outliers mainly reside in v...
The questions brought by high dimensional data is interesting and challenging. Our study is targetin...
In many real world applications data is collected in multi-dimensional spaces, with the knowledge hi...
In this paper, we introduce a bottom-up approach to discover clusters of outliers in any m-dimension...
Abstract Outlier detection is an important problem that has applications in many fields. High dimens...
Abstract — High Dimensional data is need of world as social networking sites, biomedical data, sport...
Outlier detection is a fundamental step in knowledge discovery in databases. With the increasing num...
Many data mining algorithms focus on clustering methods. There are also a lot of approaches designed...
Abstract. The outlier detection problem has important applications in the field of fraud detection, ...