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arXiv:1707.03909 [stat.ML]AbstractReferencesReviewsResources

Model Selection for Anomaly Detection

Evgeny Burnaev, Pavel Erofeev, Dmitry Smolyakov

Published 2017-07-12Version 1

Anomaly detection based on one-class classification algorithms is broadly used in many applied domains like image processing (e.g. detection of whether a patient is "cancerous" or "healthy" from mammography image), network intrusion detection, etc. Performance of an anomaly detection algorithm crucially depends on a kernel, used to measure similarity in a feature space. The standard approaches (e.g. cross-validation) for kernel selection, used in two-class classification problems, can not be used directly due to the specific nature of a data (absence of a second, abnormal, class data). In this paper we generalize several kernel selection methods from binary-class case to the case of one-class classification and perform extensive comparison of these approaches using both synthetic and real-world data.

Comments: 6 pages, 3 figures, Eighth International Conference on Machine Vision (December 8, 2015)
Journal: Proc. SPIE 9875, 2015
Categories: stat.ML, cs.LG, stat.AP
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