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A Dual Approach to Scalable Verification of Deep Networks

机译:深网络可扩展验证的双方法

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This paper addresses the problem of formally verifying desirable properties of neural networks, i.e., obtaining provable guarantees that neural networks satisfy specifications relating their inputs and outputs (robustness to bounded norm adversarial perturbations, for example). Most previous work on this topic was limited in its applicability by the size of the network, network architecture and the complexity of properties to be verified. In contrast, our framework applies to a general class of activation functions and specifications on neural network inputs and outputs. We formulate verification as an optimization problem (seeking to find the largest violation of the specification) and solve a Lagrangian relaxation of the optimization problem to obtain an upper bound on the worst case violation of the specification being verified. Our approach is anytime i.e. it can be stopped at any time and a valid bound on the maximum violation can be obtained. We develop specialized verification algorithms with provable tightness guarantees under special assumptions and demonstrate the practical significance of our general verification approach on a variety of verification tasks.
机译:本文涉及正式验证神经网络的理想性质的问题,即获得神经网络满足其输入和输出相关规范的可证明的保证(例如,对有界常见侵扰扰动的鲁棒性)。最先前的本主题的工作是通过网络,网络架构和要验证的属性的复杂性的适用性限制。相比之下,我们的框架适用于神经网络输入和输出的一般激活功能和规范。我们将验证作为优化问题(寻求找到最大违反规范),并解决了Lagrangian对优化问题的放松,以获得最坏情况违反所验证规范的最坏情况。我们的方法是随时I.E。可以随时停止,并且可以获得最大违规的有效绑定。我们在特殊假设下开发专业的验证算法,并在特殊假设下担保,并展示了我们在各种验证任务上的一般验证方法的实际意义。

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