Distance-based outlier detection is widely adopted in many fields, e.g., data mining and machine learning, because it is unsupervised, can be employed in a generic metric space, and does not have any assumptions of data distributions. Data mining and machine learning applications face a challenge of dealing with large datasets, which requires efficient distance-based outlier detection algorithms. Due to the popularization of computational environments with large memory, it is possible to build a main-memory index and detect outliers based on it, which is a promising solution for fast distance-based outlier detection. Motivated by this observation, we propose a novel approach that exploits a proximity graph. Our approach can employ an arbitr...
Abstract. The outlier detection problem has important applications in the field of fraud detection, ...
We propose a distributed approach addressing the problem of distance-based outlier detection in very...
International audienceDetecting outliers in a dataset is a problem with numerous applications in dat...
Distance-based outlier detection is widely adopted in many fields, e.g., data mining and machine lea...
In many fields, e.g., data mining and machine learning, distance-based outlier detection (DOD) is wi...
Detecting outliers in data is an important problem with in-teresting applications in a myriad of dom...
The mining task of outlier detection is essential in many expert and intelligent systems exploited i...
In this paper, we propose a novel formulation for distance-based outliers that is based on the dista...
Distance-based outlier detection is an important data mining technique that finds abnormal data obje...
Abstract. Popular outlier detection methods require the pairwise com-parison of objects to compute t...
“One person’s noise is another person’s signal”. Outlier detection is used to clean up datasets and ...
Accurate and robust three-dimensional reconstruction of objects allows for applications in many aspe...
In this work we introduce a distributed method for detecting distance-based outliers in very large d...
Outliers, also called anomalies are data patterns that do not conform to the behavior that is expect...
Outlier detection in high-dimensional datasets is a fundamental and challenging problem across disci...
Abstract. The outlier detection problem has important applications in the field of fraud detection, ...
We propose a distributed approach addressing the problem of distance-based outlier detection in very...
International audienceDetecting outliers in a dataset is a problem with numerous applications in dat...
Distance-based outlier detection is widely adopted in many fields, e.g., data mining and machine lea...
In many fields, e.g., data mining and machine learning, distance-based outlier detection (DOD) is wi...
Detecting outliers in data is an important problem with in-teresting applications in a myriad of dom...
The mining task of outlier detection is essential in many expert and intelligent systems exploited i...
In this paper, we propose a novel formulation for distance-based outliers that is based on the dista...
Distance-based outlier detection is an important data mining technique that finds abnormal data obje...
Abstract. Popular outlier detection methods require the pairwise com-parison of objects to compute t...
“One person’s noise is another person’s signal”. Outlier detection is used to clean up datasets and ...
Accurate and robust three-dimensional reconstruction of objects allows for applications in many aspe...
In this work we introduce a distributed method for detecting distance-based outliers in very large d...
Outliers, also called anomalies are data patterns that do not conform to the behavior that is expect...
Outlier detection in high-dimensional datasets is a fundamental and challenging problem across disci...
Abstract. The outlier detection problem has important applications in the field of fraud detection, ...
We propose a distributed approach addressing the problem of distance-based outlier detection in very...
International audienceDetecting outliers in a dataset is a problem with numerous applications in dat...