Outliers usually spread across regions of low density. However, due to the absence or scarcity of outliers, designing a robust detector to sift outliers from a given dataset is still very challenging. In this paper, we consider to identify relative outliers from the target dataset with respect to another reference dataset of normal data. Particularly, we em-ploy Maximum Mean Discrepancy (MMD) for matching the distribution between these two datasets and present a novel learning framework to learn a relative outlier detector. The learning task is formulated as a Mixed Integer Programming (MIP) problem, which is computationally hard. To this end, we propose an effective procedure to find a largely violated labeling vector for identifying relat...
Outlier detection techniques are widely used in many applications such as credit-card fraud detectio...
Outliers in a set of data are elements which are anomalous with respect to the majority of the data ...
Outlier detection is concerned with discovering exceptional behaviors of objects. Its theoretical pr...
Outliers usually spread across regions of low density. However, due to the absence or scarcity of ou...
Outlier detection aims to capture or identify uncommon events or instances. This technique has been ...
Due to the absence or scarcity of outliers, designing a robust outlier detector is very challenging....
This thesis describes novel approaches to the problem of outlier detection. It is one of the most im...
A familiar problem in machine learning is to determine which data points are outliers when the unde...
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 paper deals with finding outliers (exceptions) in large datasets. The identification of outlier...
International audienceThe ability to collect and store ever more massive databases has been accompan...
Outlier detection aims to identify rare, minority objects in a dataset that are significantly differ...
AbstractOutlier mining is a hot topic of data mining. After studying the commonly used outlier minin...
Outlier detection is an important step in many data-mining applications. In this paper, we propose a...
Outlier detection techniques are widely used in many applications such as credit-card fraud detectio...
Outliers in a set of data are elements which are anomalous with respect to the majority of the data ...
Outlier detection is concerned with discovering exceptional behaviors of objects. Its theoretical pr...
Outliers usually spread across regions of low density. However, due to the absence or scarcity of ou...
Outlier detection aims to capture or identify uncommon events or instances. This technique has been ...
Due to the absence or scarcity of outliers, designing a robust outlier detector is very challenging....
This thesis describes novel approaches to the problem of outlier detection. It is one of the most im...
A familiar problem in machine learning is to determine which data points are outliers when the unde...
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 paper deals with finding outliers (exceptions) in large datasets. The identification of outlier...
International audienceThe ability to collect and store ever more massive databases has been accompan...
Outlier detection aims to identify rare, minority objects in a dataset that are significantly differ...
AbstractOutlier mining is a hot topic of data mining. After studying the commonly used outlier minin...
Outlier detection is an important step in many data-mining applications. In this paper, we propose a...
Outlier detection techniques are widely used in many applications such as credit-card fraud detectio...
Outliers in a set of data are elements which are anomalous with respect to the majority of the data ...
Outlier detection is concerned with discovering exceptional behaviors of objects. Its theoretical pr...