International audienceThe ability to collect and store ever more massive databases has been accompanied by the need to process them efficiently. In many cases, most observations have the same behavior, while a probable small proportion of these observations are abnormal. Detecting the latter, defined as outliers, is one of the major challenges for machine learning applications (e.g. in fraud detection or in predictive maintenance). In this paper, we propose a methodology addressing the problem of outlier detection, by learning a data-driven scoring function defined on the feature space which reflects the degree of abnormality of the observations. This scoring function is learnt through a well-designed binary classification problem whose em...
Learning how to rank multivariate unlabeled observations depending on their degree of abnormality/no...
Outliers in a set of data are elements which are anomalous with respect to the majority of the data ...
A familiar problem in machine learning is to determine which data points are outliers when the unde...
The rapid growth in the field of data mining has lead to the development of various methods for outl...
Outlier detection is an important data mining task for consistency checks, fraud detection, etc. Bin...
Outlier detection methods automatically identify instances that deviate from the majority of the dat...
Our thesis is that we can efficiently identify meaningful outliers in large, multidimensional datas...
This thesis describes novel approaches to the problem of outlier detection. It is one of the most im...
Outlier detection refers to the problem of the identification and, where appropriate, the eliminatio...
This paper deals with finding outliers (exceptions) in large datasets. The identification of outlier...
An Outlier is a data point which is significantly different from the remaining data points. Outlier ...
Most of existing outlier detection methods assume that the outlier factors (i.e., outlierness scorin...
Outlier detection aims to capture or identify uncommon events or instances. This technique has been ...
Anomalies are those records, which have different behavior and do not comply with the remaining reco...
Outliers are observations that are rare or exceptional in some sense. Outlier Detection is the proce...
Learning how to rank multivariate unlabeled observations depending on their degree of abnormality/no...
Outliers in a set of data are elements which are anomalous with respect to the majority of the data ...
A familiar problem in machine learning is to determine which data points are outliers when the unde...
The rapid growth in the field of data mining has lead to the development of various methods for outl...
Outlier detection is an important data mining task for consistency checks, fraud detection, etc. Bin...
Outlier detection methods automatically identify instances that deviate from the majority of the dat...
Our thesis is that we can efficiently identify meaningful outliers in large, multidimensional datas...
This thesis describes novel approaches to the problem of outlier detection. It is one of the most im...
Outlier detection refers to the problem of the identification and, where appropriate, the eliminatio...
This paper deals with finding outliers (exceptions) in large datasets. The identification of outlier...
An Outlier is a data point which is significantly different from the remaining data points. Outlier ...
Most of existing outlier detection methods assume that the outlier factors (i.e., outlierness scorin...
Outlier detection aims to capture or identify uncommon events or instances. This technique has been ...
Anomalies are those records, which have different behavior and do not comply with the remaining reco...
Outliers are observations that are rare or exceptional in some sense. Outlier Detection is the proce...
Learning how to rank multivariate unlabeled observations depending on their degree of abnormality/no...
Outliers in a set of data are elements which are anomalous with respect to the majority of the data ...
A familiar problem in machine learning is to determine which data points are outliers when the unde...