Zhen Liang , Dejin Ren , Bai Xue , Ji Wang , Wenjing Yang , Wanwei Liu
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引用次数: 0
摘要
神经网络(NN)越来越多地应用于自动驾驶汽车等对安全至关重要的系统中。然而,神经网络非常脆弱,而且经常表现不佳。因此,在实际部署之前,它们的行为应该得到严格的保证。在本文中,我们提出了一种集合边界可达性方法,从拓扑学的角度研究 NN 的安全验证问题。给定一个具有输入集和安全集的 NN,安全验证问题是确定输入集产生的 NN 的所有输出是否都在安全集之内。在我们的方法中,首先利用的是 NN 的同构特性,它在输入集的边界和输出集的边界之间建立了严格的保证。同构是开放映射的一种特例,因此我们的集合边界方法被认为可以推广到具有开放映射特性的情况2。利用这两个特性,可以通过提取输入集的子集而不是整个输入集来方便可达性计算,从而控制可达性分析中的包裹效应,并减轻安全验证的计算负担。在一些广泛使用的 NN(如可反残差网络(i-ResNets)和神经常微分方程(Neural ODE))中存在同构属性,而开放映射是一种不太严格的拓扑属性,与同构相比更容易满足。对于建立了这两个属性中任何一个属性的 NN,我们的集合边界可达性方法只需对输入集合的边界进行可达性分析即可。此外,对于输入集不具备这些特性的 NN,我们也会探索输入集的子集以建立局部同构特性,然后放弃这些子集进行可达性计算。最后,一些示例展示了我们提出的方法的性能。
Verifying safety of neural networks from topological perspectives
Neural networks (NNs) are increasingly applied in safety-critical systems such as autonomous vehicles. However, they are fragile and are often ill-behaved. Consequently, their behaviors should undergo rigorous guarantees before deployment in practice. In this paper, we propose a set-boundary reachability method to investigate the safety verification problem of NNs from topological perspectives. Given an NN with an input set and a safe set, the safety verification problem is to determine whether all outputs of the NN resulting from the input set fall within the safe set. In our method, the homeomorphism property of NNs is first exploited, which establishes rigorous guarantees between the boundaries of the input set and the boundaries of the output set. A homeomorphism is a special case of open maps, and consequently our set-boundary method is considered to be generalized to situations with open map property then2. The exploitation of these two properties facilitates reachability computations via extracting subsets of the input set rather than the entire input set, thus controlling the wrapping effect in reachability analysis and facilitating the reduction of computation burdens for safety verification. The homeomorphism property exists in some widely used NNs such as invertible residual networks (i-ResNets) and Neural ordinary differential equations (Neural ODEs), and the open map is a less strict topological property and is easier to satisfy compared with homeomorphisms. For NNs establishing either of these two properties, our set-boundary reachability method only needs to perform reachability analysis on the boundary of the input set. Moreover, for NNs that do not feature these properties with respect to the input set, we also explore subsets of the input set for establishing the local homeomorphism property and then abandon these subsets for reachability computations. Finally, some examples demonstrate the performance of our proposed method.
期刊介绍:
Science of Computer Programming is dedicated to the distribution of research results in the areas of software systems development, use and maintenance, including the software aspects of hardware design.
The journal has a wide scope ranging from the many facets of methodological foundations to the details of technical issues andthe aspects of industrial practice.
The subjects of interest to SCP cover the entire spectrum of methods for the entire life cycle of software systems, including
• Requirements, specification, design, validation, verification, coding, testing, maintenance, metrics and renovation of software;
• Design, implementation and evaluation of programming languages;
• Programming environments, development tools, visualisation and animation;
• Management of the development process;
• Human factors in software, software for social interaction, software for social computing;
• Cyber physical systems, and software for the interaction between the physical and the machine;
• Software aspects of infrastructure services, system administration, and network management.