Safe Inputs Approximation for Black-Box Systems

Bai Xue, Yang Liu, L. Ma, Xiyue Zhang, Meng Sun, Xiaofei Xie
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引用次数: 5

Abstract

Given a family of independent and identically distributed samples extracted from the input region and their corresponding outputs, in this paper we propose a method to under-approximate the set of safe inputs that lead the black-box system to respect a given safety specification. Our method falls within the framework of probably approximately correct (PAC) learning. The computed under-approximation comes with statistical soundness provided by the underlying PAC learning process. Such a set, which we call a PAC under-approximation, is obtained by computing a PAC model of the black-box system with respect to the specified safety specification. In our method, the PAC model is computed based on the scenario approach, which encodes as a linear program. The linear program is constructed based on the given family of input samples and their corresponding outputs. The size of the linear program does not depend on the dimensions of the state space of the black-box system, thus providing scalability. Moreover, the linear program does not depend on the internal mechanism of the black-box system, thus being applicable to systems that existing methods are not capable of dealing with. Some case studies demonstrate these properties, general performance and usefulness of our approach.
黑箱系统的安全输入近似
给定从输入区域及其相应输出中提取的一组独立且相同分布的样本,在本文中,我们提出了一种方法来低于近似导致黑箱系统尊重给定安全规范的安全输入集。我们的方法属于大概近似正确(PAC)学习的框架。计算得到的欠逼近值与底层PAC学习过程提供的统计稳健性有关。通过计算黑箱系统相对于规定的安全规范的PAC模型,得到这样一个集合,我们称之为PAC欠逼近。在我们的方法中,PAC模型是基于场景方法计算的,该方法编码为线性程序。线性规划是基于给定的输入样本族及其相应的输出构造的。线性程序的大小不依赖于黑盒系统状态空间的维度,从而提供了可扩展性。此外,线性规划不依赖于黑箱系统的内部机制,因此适用于现有方法无法处理的系统。一些案例研究展示了我们方法的这些特性、一般性能和有用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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