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@@ -85,37 +85,6 @@
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pages = {716–721},
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}
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,
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@inproceedings{deepsvdd,
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title = {Deep One-Class Classification},
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author = {Ruff, Lukas and Vandermeulen, Robert and Goernitz, Nico and Deecke,
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Lucas and Siddiqui, Shoaib Ahmed and Binder, Alexander and M{\"u}ller
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, Emmanuel and Kloft, Marius},
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booktitle = {Proceedings of the 35th International Conference on Machine
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Learning},
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pages = {4393--4402},
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year = {2018},
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editor = {Dy, Jennifer and Krause, Andreas},
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volume = {80},
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series = {Proceedings of Machine Learning Research},
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month = {10--15 Jul},
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publisher = {PMLR},
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pdf = {http://proceedings.mlr.press/v80/ruff18a/ruff18a.pdf},
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url = {https://proceedings.mlr.press/v80/ruff18a.html},
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abstract = {Despite the great advances made by deep learning in many machine
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learning problems, there is a relative dearth of deep learning
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approaches for anomaly detection. Those approaches which do exist
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involve networks trained to perform a task other than anomaly
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detection, namely generative models or compression, which are in
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turn adapted for use in anomaly detection; they are not trained on
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an anomaly detection based objective. In this paper we introduce a
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new anomaly detection method—Deep Support Vector Data Description—,
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which is trained on an anomaly detection based objective. The
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adaptation to the deep regime necessitates that our neural network
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and training procedure satisfy certain properties, which we
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demonstrate theoretically. We show the effectiveness of our method
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on MNIST and CIFAR-10 image benchmark datasets as well as on the
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detection of adversarial examples of GTSRB stop signs.},
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},
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@inproceedings{deep_svdd,
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title = {Deep One-Class Classification},
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author = {Ruff, Lukas and Vandermeulen, Robert and Goernitz, Nico and Deecke,
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