深度神经网络决策边界:挑战与机遇

Hamid Karimi, Jiliang Tang
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引用次数: 17

摘要

一个关键的方面仍然是相当未知的,但可以告诉我们关于深度神经网络的行为是他们的决策边界。一旦我们理解了深度模型如何以及为什么会划分出一种特定形式的决策边界,从而做出特定的决策,信任就可以得到改善。对抗性示例的鲁棒性与决策边界直接相关,因为对抗性示例基本上被两个类之间的决策边界“遗漏”了。然而,研究深度神经网络的决策边界面临着巨大的挑战。首先,我们如何在决策边界附近生成与真实样本相似的实例?其次,我们如何利用近决策边界实例来表征深度神经网络的行为?为了解决这些挑战,我们重点研究了深度神经网络分类器的决策边界。特别是,我们提出了一种新的方法来生成预训练dnn的决策边界附近的实例,然后利用这些实例来表征深度模型的行为。
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Decision Boundary of Deep Neural Networks: Challenges and Opportunities
One crucial aspect that yet remains fairly unknown while can inform us about the behavior of deep neural networks is their decision boundaries. Trust can be improved once we understand how and why deep models carve out a particular form of decision boundary and thus make particular decisions. Robustness against adversarial examples is directly related to the decision boundary as adversarial examples are basically 'missed out' by the decision boundary between two classes. Investigating the decision boundary of deep neural networks, nevertheless, faces tremendous challenges. First, how we can generate instances near the decision boundary that are similar to real samples? Second, how we can leverage near decision boundary instances to characterize the behaviour of deep neural networks? Motivated to solve these challenges, we focus on investigating the decision boundary of deep neural network classifiers. In particular, we propose a novel approach to generate instances near decision boundary of pre-trained DNNs and then leverage these instances to characterize the behaviour of deep models.
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