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Estimating Confidence for Deep Neural Networks through Density modeling

机译:通过密度建模估算深度神经网络的信心

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State-of-the-art Neural Networks can be easily fooled into providing incorrect high-confidence predictions for images with small amounts of adversarial noise. Does this expose a flaw with deep neural networks, or do we simply need a better way to estimate confidence? In this paper we consider the problem of accurately estimating predictive confidence. We formulate this problem as that of density modelling, and show how traditional methods such as softmax produce poor estimates. To address this issue, we propose a novel confidence measure based on density modelling approaches. We test these measures on images distorted by blur, JPEG compression, random noise and adversarial noise. Experiments show that our confidence measure consistently shows reduced confidence scores in the presence of such distortions - a property which softmax lacks.
机译:最先进的神经网络可以很容易地欺骗,为具有少量对抗噪声的图像提供不正确的高置信预测。这是否使缺陷与深神经网络有缺陷,或者我们只是需要更好的方法来估计信心?在本文中,我们考虑了准确估计预测信心的问题。我们将这个问题与密度建模一样,并展示了Softmax等传统方法如何产生差的估计。为了解决这个问题,我们提出了一种基于密度建模方法的新型置信度量。我们在模糊,JPEG压缩,随机噪声和对抗噪声扭曲的图像上测试这些措施。实验表明,我们的置信度量始终如一地表现出这种扭曲的存在下降的置信分数 - 软墨西哥缺乏的性质。

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