基于动态规划的贝叶斯神经网络鲁棒性证明

Steven Adams, A. Patané, Morteza Lahijanian, L. Laurenti
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摘要

本文介绍了一种分析贝叶斯神经网络(BNNs)对抗鲁棒性的有效算法框架BNN-DP。给定一个紧凑的输入点集$T\子集\mathbb{R}^n$, BNN- dp计算BNN对$T$中所有点的预测的下界和上界。该框架基于对bnn作为随机动态系统的解释,这使得使用动态规划(DP)算法可以沿网络层绑定预测范围。具体来说,该方法利用界传播技术和凸松弛导出了一个反向递归过程,以分段仿射函数过度逼近BNN的预测范围。该算法具有通用性,可以同时处理回归和分类任务。在一系列关于各种回归和分类任务以及BNN架构的实验中,我们表明BNN- dp在边界的紧密性和计算效率方面都优于最先进的方法多达四个数量级。
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BNN-DP: Robustness Certification of Bayesian Neural Networks via Dynamic Programming
In this paper, we introduce BNN-DP, an efficient algorithmic framework for analysis of adversarial robustness of Bayesian Neural Networks (BNNs). Given a compact set of input points $T\subset \mathbb{R}^n$, BNN-DP computes lower and upper bounds on the BNN's predictions for all the points in $T$. The framework is based on an interpretation of BNNs as stochastic dynamical systems, which enables the use of Dynamic Programming (DP) algorithms to bound the prediction range along the layers of the network. Specifically, the method uses bound propagation techniques and convex relaxations to derive a backward recursion procedure to over-approximate the prediction range of the BNN with piecewise affine functions. The algorithm is general and can handle both regression and classification tasks. On a set of experiments on various regression and classification tasks and BNN architectures, we show that BNN-DP outperforms state-of-the-art methods by up to four orders of magnitude in both tightness of the bounds and computational efficiency.
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