Neural Ordinary Differential Equations (NODEs) are a novel neural architecture, built around initial value problems with learned dynamics which are solved during inference. Thought to be inherently more robust against adversarial perturbations, they were recently shown to be vulnerable to strong adversarial attacks, highlighting the need for formal guarantees. However, despite significant progress in robustness verification for standard feed-forward architectures, the verification of high dimensional NODEs remains an open problem. In this work, we address this challenge and propose GAINS, an analysis framework for NODEs combining three key ideas: (i) a novel class of ODE solvers, based on variable but discrete time steps, (ii) an efficient graph representation of solver trajectories, and (iii) a novel abstraction algorithm operating on this graph representation. Together, these advances enable the efficient analysis and certified training of high-dimensional NODEs, by reducing the runtime from an intractable $O(\exp(d)+\exp(T))$ to ${O}(d+T^2 \log^2T)$ in the dimensionality $d$ and integration time $T$. In an extensive evaluation on computer vision (MNIST and FMNIST) and time-series forecasting (PHYSIO-NET) problems, we demonstrate the effectiveness of both our certified training and verification methods.
翻译:然而,尽管在标准进料推进结构的稳健性核查方面取得重大进展,但是,高维内分异的内分量(NODs)的核查仍是一个尚未解决的问题。在这项工作中,我们应对这一挑战,并提出性别问题信息和联网系统,一个将三种关键理念相结合的分析框架: (一) 一种新颖的内分解解解码器,基于可变但互不相连的时间步骤,(二) 一种有效的解析器轨迹图示,以及(三) 一种新的抽象算法,以这种图表形式运作。这些进展使得能够对高维量的内分辨码进行高效的分析和经认证的培训,将高维内分辨码的内分解元(Exp(d) Expl(T)美元)减为$(d+T%2\log%2T),并结合三种关键理念:(一) 一种基于可变但又互不相连的时间步骤的内分解解解解解码解码解码解码解码解码解码解码解码解码解码解码器,(FIST-IST-IST-IST-IST-IST-IL 和IGNL AS-IGNDU) 和时间预测(美元) 和时间预测的整合(美元) 和时间的集化方法的一体化和时间(美元)的一体化的整合化方法。</s>