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A Unified Subspace Outlier Ensemble Framework for Outlier Detection
zengyou he 1 * #,Xiaofei Xu 2
1.Harbin Institute of Technology
2.Department of Computer Science and Engineering Harbin Institute of Technologe
*Correspondence author
#Submitted by
Subject:
Funding: none
Opened online:25 May 2005
Accepted by: none
Citation: zengyou he,Xiaofei Xu.A Unified Subspace Outlier Ensemble Framework for Outlier Detection[OL]. [25 May 2005] http://en.paper.edu.cn/en_releasepaper/content/2107
 
 
he task of outlier detection is to find small groups of data objects that are exceptional when compared with rest large amount of data. Detection of such outliers is important for many applications such as fraud detection and customer migration. Most such applications are high dimensional domains in which the data may contain hundreds of dimensions. However, the outlier detection problem itself is not well defined and none of the existing definitions are widely accepted, especially in high dimensional space. In this paper, our first contribution is to propose a unified framework for outlier detection in high dimensional spaces from an ensemble-learning viewpoint. In our new framework, the outlying-ness of each data object is measured by fusing outlier factors in different subspaces using a combination function. Accordingly, we show that all existing researches on outlier detection can be regarded as special cases in the unified framework with respect to the set of subspaces consider
Keywords:Outlier, Outlier Ensemble, High Dimensional Data, Ensemble Learning, Information Fusion, Data Mining.
 
 
 

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