DocumentCode
12795
Title
Anomaly Detection via Online Oversampling Principal Component Analysis
Author
Lee, Yuh-Jye ; Yeh, Yi-Ren ; Wang, Yu-Chiang Frank
Author_Institution
National Taiwan University of Science and Technology, Taipei
Volume
25
Issue
7
fYear
2013
fDate
Jul-13
Firstpage
1460
Lastpage
1470
Abstract
Anomaly detection has been an important research topic in data mining and machine learning. Many real-world applications such as intrusion or credit card fraud detection require an effective and efficient framework to identify deviated data instances. However, most anomaly detection methods are typically implemented in batch mode, and thus cannot be easily extended to large-scale problems without sacrificing computation and memory requirements. In this paper, we propose an online oversampling principal component analysis (osPCA) algorithm to address this problem, and we aim at detecting the presence of outliers from a large amount of data via an online updating technique. Unlike prior principal component analysis (PCA)-based approaches, we do not store the entire data matrix or covariance matrix, and thus our approach is especially of interest in online or large-scale problems. By oversampling the target instance and extracting the principal direction of the data, the proposed osPCA allows us to determine the anomaly of the target instance according to the variation of the resulting dominant eigenvector. Since our osPCA need not perform eigen analysis explicitly, the proposed framework is favored for online applications which have computation or memory limitations. Compared with the well-known power method for PCA and other popular anomaly detection algorithms, our experimental results verify the feasibility of our proposed method in terms of both accuracy and efficiency.
Keywords
Algorithm design and analysis; Covariance matrix; Data mining; Data models; Eigenvalues and eigenfunctions; Memory management; Principal component analysis; Anomaly detection; least squares; online updating; oversampling; principal component analysis;
fLanguage
English
Journal_Title
Knowledge and Data Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1041-4347
Type
jour
DOI
10.1109/TKDE.2012.99
Filename
6200273
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