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Deep One-Class Classification

机译:深度一类分类

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摘要

Despite the great advances made by deep learning in many machine learning problems, there is a relative dearth of deep learning approaches for anomaly detection. Those approaches which do exist involve networks trained to perform a task other than anomaly detection, namely generative models or compression, which are in turn adapted for use in anomaly detection; they are not trained on an anomaly detection based objective. In this paper we introduce a new anomaly detection method—Deep Support Vector Data Description—, which is trained on an anomaly detection based objective. The adaptation to the deep regime necessitates that our neural network and training procedure satisfy certain properties, which we demonstrate theoretically. We show the effectiveness of our method on MNIST and CIFAR-10 image benchmark datasets as well as on the detection of adversarial examples of GTSRB stop signs.
机译:尽管深度学习在许多机器学习问题中取得了长足的进步,但相对而言,相对缺乏深度学习的异常检测方法。确实存在的那些方法涉及经过训练以执行除异常检测以外的任务(即生成模型或压缩)的网络,而这些模型又适用于异常检测;他们没有接受过基于异常检测的目标的培训。在本文中,我们介绍了一种新的异常检测方法-深度支持向量数据描述-,该方法在基于异常检测的目标上进行了训练。适应深层机制需要我们的神经网络和训练过程满足某些属性,我们从理论上证明了这一点。我们展示了我们的方法在MNIST和CIFAR-10图像基准数据集上以及在GTSRB停车标志的对抗示例检测中的有效性。

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