6
6.0
Jun 29, 2018
06/18
by
Ramon Oliveira; Pedro Tabacof; Eduardo Valle
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We evaluate the uncertainty quality in neural networks using anomaly detection. We extract uncertainty measures (e.g. entropy) from the predictions of candidate models, use those measures as features for an anomaly detector, and gauge how well the detector differentiates known from unknown classes. We assign higher uncertainty quality to candidate models that lead to better detectors. We also propose a novel method for sampling a variational approximation of a Bayesian neural network, called...
Topics: Machine Learning, Learning, Neural and Evolutionary Computing, Computing Research Repository,...
Source: http://arxiv.org/abs/1612.01251
5
5.0
Jun 28, 2018
06/18
by
Pedro Tabacof; Eduardo Valle
texts
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Adversarial examples have raised questions regarding the robustness and security of deep neural networks. In this work we formalize the problem of adversarial images given a pretrained classifier, showing that even in the linear case the resulting optimization problem is nonconvex. We generate adversarial images using shallow and deep classifiers on the MNIST and ImageNet datasets. We probe the pixel space of adversarial images using noise of varying intensity and distribution. We bring novel...
Topics: Neural and Evolutionary Computing, Computing Research Repository
Source: http://arxiv.org/abs/1510.05328
2
2.0
Jun 29, 2018
06/18
by
Pedro Tabacof; Julia Tavares; Eduardo Valle
texts
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We investigate adversarial attacks for autoencoders. We propose a procedure that distorts the input image to mislead the autoencoder in reconstructing a completely different target image. We attack the internal latent representations, attempting to make the adversarial input produce an internal representation as similar as possible as the target's. We find that autoencoders are much more robust to the attack than classifiers: while some examples have tolerably small input distortion, and...
Topics: Computer Vision and Pattern Recognition, Neural and Evolutionary Computing, Computing Research...
Source: http://arxiv.org/abs/1612.00155