基于线性规划的分类深度神经网络鲁棒性验证

Wang Lin, Zhengfeng Yang, Xin Chen, Qingye Zhao, Xiangkun Li, Zhiming Liu, Jifeng He
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引用次数: 34

摘要

由于分类深度神经网络(CDNNs)嵌入到许多安全关键应用中,因此迫切需要验证其鲁棒性。现有的鲁棒性验证方法依赖于计算输出集的过近似值,由于误差积累伴随着近似值,很难扩展到实际的cdn。在本文中,我们开发了一种新的方法来验证具有s型激活函数的cdn的鲁棒性。它将鲁棒性验证问题转化为检查输入区域中最可疑点的等效问题,构成非线性优化问题。通过将非线性约束放宽为线性包含,进一步细化为线性规划问题。我们在一些最先进的基准测试中对一些训练用于图像分类的cdn进行了比较实验,显示了我们的精度和可扩展性优势,能够有效验证实际的cdn。
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Robustness Verification of Classification Deep Neural Networks via Linear Programming
There is a pressing need to verify robustness of classification deep neural networks (CDNNs) as they are embedded in many safety-critical applications. Existing robustness verification approaches rely on computing the over-approximation of the output set, and can hardly scale up to practical CDNNs, as the result of error accumulation accompanied with approximation. In this paper, we develop a novel method for robustness verification of CDNNs with sigmoid activation functions. It converts the robustness verification problem into an equivalent problem of inspecting the most suspected point in the input region which constitutes a nonlinear optimization problem. To make it amenable, by relaxing the nonlinear constraints into the linear inclusions, it is further refined as a linear programming problem. We conduct comparison experiments on a few CDNNs trained for classifying images in some state-of-the-art benchmarks, showing our advantages of precision and scalability that enable effective verification of practical CDNNs.
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