A wide range of methods have been proposed for detect-ing different types of outliers in full space and subspaces. However, the interpretability of outliers, that is, explaining in what ways and to what extent an object is an outlier, remains a critical open issue. In this paper, we develop a notion of contextual outliers on categorical data. Intuitively, a contextual outlier is a small group of objects that share strong similarity with a significantly larger reference group of objects on some attributes, but deviate dramatically on some other attributes. We develop a detection algorithm, and conduct experiments to evaluate our approach
Outlier mining is an important task to discover the data records which have an exceptional behavior ...
This is an Accepted Manuscript of an article published by Taylor & Francis in “ Quality and Reliabil...
Detecting outliers is a widely studied problem in many disciplines, including statistics, data minin...
Outlier detection has been studied extensively in data mining. However, as the emergence of huge dat...
International audienceOutlier detection has been widely explored and applied to different real-world...
Outliers are anomalous and interesting objects that are notably different from the rest of the data....
Outlier detection techniques are widely used in many applications such as credit-card fraud detectio...
Most of existing outlier detection methods assume that the outlier factors (i.e., outlierness scorin...
Abstract: An Outlier is an extreme value in a data set. Using clustering techniques we can detect ou...
The rapid growth in the field of data mining has lead to the development of various methods for outl...
Our thesis is that we can efficiently identify meaningful outliers in large, multidimensional datas...
Outliers detection is currently very active area of research in data set mining community. Outliers ...
The dissertation focuses on detecting contextual outliers from heterogeneous data sources. Modern se...
This paper deals with finding outliers (exceptions) in large datasets. The identification of outlier...
Abstract Outlier detection is an important problem that has applications in many fields. High dimens...
Outlier mining is an important task to discover the data records which have an exceptional behavior ...
This is an Accepted Manuscript of an article published by Taylor & Francis in “ Quality and Reliabil...
Detecting outliers is a widely studied problem in many disciplines, including statistics, data minin...
Outlier detection has been studied extensively in data mining. However, as the emergence of huge dat...
International audienceOutlier detection has been widely explored and applied to different real-world...
Outliers are anomalous and interesting objects that are notably different from the rest of the data....
Outlier detection techniques are widely used in many applications such as credit-card fraud detectio...
Most of existing outlier detection methods assume that the outlier factors (i.e., outlierness scorin...
Abstract: An Outlier is an extreme value in a data set. Using clustering techniques we can detect ou...
The rapid growth in the field of data mining has lead to the development of various methods for outl...
Our thesis is that we can efficiently identify meaningful outliers in large, multidimensional datas...
Outliers detection is currently very active area of research in data set mining community. Outliers ...
The dissertation focuses on detecting contextual outliers from heterogeneous data sources. Modern se...
This paper deals with finding outliers (exceptions) in large datasets. The identification of outlier...
Abstract Outlier detection is an important problem that has applications in many fields. High dimens...
Outlier mining is an important task to discover the data records which have an exceptional behavior ...
This is an Accepted Manuscript of an article published by Taylor & Francis in “ Quality and Reliabil...
Detecting outliers is a widely studied problem in many disciplines, including statistics, data minin...