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Interpret Neural Networks by Identifying Critical Data Routing Paths

机译:通过识别关键数据路由路径来解释神经网络

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Interpretability of a deep neural network aims to explain the rationale behind its decisions and enable the users to understand the intelligent agents, which has become an important issue due to its importance in practical applications. To address this issue, we develop a Distillation Guided Routing method, which is a flexible framework to interpret a deep neural network by identifying critical data routing paths and analyzing the functional processing behavior of the corresponding layers. Specifically, we propose to discover the critical nodes on the data routing paths during network inferring prediction for individual input samples by learning associated control gates for each layer's output channel. The routing paths can, therefore, be represented based on the responses of concatenated control gates from all the layers, which reflect the network's semantic selectivity regarding to the input patterns and more detailed functional process across different layer levels. Based on the discoveries, we propose an adversarial sample detection algorithm by learning a classifier to discriminate whether the critical data routing paths are from real or adversarial samples. Experiments demonstrate that our algorithm can effectively achieve high defense rate with minor training overhead.
机译:深度神经网络的可解释性旨在解释其决策背后的理由,使用户能够理解智能代理,这是由于其在实际应用中的重要性。为了解决这个问题,我们开发了一种蒸馏引导路由方法,这是一种通过识别关键数据路由路径来解释深度神经网络的灵活框架,并分析相应层的功能处理行为。具体地,我们建议在网络推断各个输入样本的网络推断出通过学习每个层的输出信道来发现数据路由路径上的临界节点。因此,可以基于来自所有层的连接控制门的响应来表示路由路径,这反映了网络对输入模式的语义选择性以及跨不同层级别的更详细的功能过程。基于发现,我们通过学习分类器来判别关键数据路径是否来自真实或对抗样本来提出普发出现的样本检测算法。实验表明,我们的算法可以有效地实现高防御率与次要训练开销。

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