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Lagrangian Decomposition for Neural Network Verification

机译:拉格朗日分解神经网络验证

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A fundamental component of neural network verification is the computation of bounds on the values their outputs can take. Previous methods have either used off-the-shelf solvers, discarding the problem structure, or relaxed the problem even further, making the bounds unnecessarily loose. We propose a novel approach based on Lagrangian Decomposition. Our formulation admits an efficient supergradient ascent algorithm, as well as an improved proximal algorithm. Both the algorithms offer three advantages: (i) they yield bounds that are provably at least as tight as previous dual algorithms relying on Lagrangian relaxations; (ii) they are based on operations analogous to forward/backward pass of neural networks layers and are therefore easily parallelizable, amenable to GPU implementation and able to take advantage of the convolutional structure of problems; and (iii) they allow for anytime stopping while still providing valid bounds. Empirically, we show that we obtain bounds comparable with off-the-shelf solvers in a fraction of their running time, and obtain tighter bounds in the same time as previous dual algorithms. This results in an overall speed-up when employing the bounds for formal verification. Code for our algorithms is available at https://github.com/oval-group/decomposition-plnn-bounds.
机译:神经网络验证的基本组件是计算其输出可以采取的值的界限。以前的方法已经使用了现成的求解器,丢弃了问题结构,或者进一步放松了问题,使得界限不必要地松动。我们提出了一种基于拉格朗日分解的新方法。我们的配方承认有效的超级播放算法,以及改进的近端算法。算法都提供了三个优点:(i)他们产生的界限至少与以前的双重算法一样紧张,依赖于拉格朗日放松; (ii)它们基于类似于神经网络层的前进/后向通行的操作,因此可以轻易并行,适用于GPU实施,并能够利用问题的卷积结构; (iii)它们允许随时停止,同时仍然提供有效界限。凭经验,我们表明我们在其运行时间的一小部分中获得了与现成的求解器相当的边界,并在以前的双算法同时获得更严格的边界。在采用正式验证时,这导致整体加速。我们的算法代码可在https://github.com/over-group/decomposition-plnn -bounds上获得。

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