Please use this identifier to cite or link to this item: https://hdl.handle.net/2440/122748
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dc.contributor.authorPang, G.-
dc.contributor.authorShen, C.-
dc.contributor.authorVan Den Hengel, A.-
dc.date.issued2019-
dc.identifier.citationKDD '19: Proceedings of the 25th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining, 2019, pp.353-362-
dc.identifier.isbn9781450362016-
dc.identifier.urihttp://hdl.handle.net/2440/122748-
dc.description.abstractAlthough deep learning has been applied to successfully address many data mining problems, relatively limited work has been done on deep learning for anomaly detection. Existing deep anomaly detection methods, which focus on learning new feature representations to enable downstream anomaly detection methods, perform indirect optimization of anomaly scores, leading to data-inefficient learning and suboptimal anomaly scoring. Also, they are typically designed as unsupervised learning due to the lack of large-scale labeled anomaly data. As a result, they are difficult to leverage prior knowledge (e.g., a few labeled anomalies) when such information is available as in many real-world anomaly detection applications. This paper introduces a novel anomaly detection framework and its instantiation to address these problems. Instead of representation learning, our method fulfills an end-to-end learning of anomaly scores by a neural deviation learning, in which we leverage a few (e.g., multiple to dozens) labeled anomalies and a prior probability to enforce statistically significant deviations of the anomaly scores of anomalies from that of normal data objects in the upper tail. Extensive results show that our method can be trained substantially more data-efficiently and achieves significantly better anomaly scoring than state-of-the-art competing methods.-
dc.description.statementofresponsibilityGuansong Pang, Chunhua Shen, Anton van den Hengel-
dc.language.isoen-
dc.publisherAssociation of Computing Machinery-
dc.rights© 2019 Association for Computing Machinery.-
dc.source.urihttp://dx.doi.org/10.1145/3292500.3330871-
dc.subjectAnomaly detection; deep learning; representation learning; neural networks; outlier detection-
dc.titleDeep anomaly detection with deviation networks-
dc.typeConference paper-
dc.contributor.conferenceACM SIGKDD International Conference on Knowledge Discovery & Data Mining (KDD) (4 Aug 2019 - 8 Aug 2019 : Anchorage, AK)-
dc.identifier.doi10.1145/3292500.3330871-
dc.publisher.placeNew York-
dc.relation.granthttp://purl.org/au-research/grants/arc/DP180103023-
pubs.publication-statusPublished-
dc.identifier.orcidPang, G. [0000-0002-9877-2716]-
dc.identifier.orcidVan Den Hengel, A. [0000-0003-3027-8364]-
Appears in Collections:Aurora harvest 8
Australian Institute for Machine Learning publications

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