Fast Online Learning of Vulnerabilities for Networks With Propagating Failures

IF 3.6 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE/ACM Transactions on Networking Pub Date : 2024-03-29 DOI:10.1109/TNET.2024.3405798
Yilin Zheng;Semih Cayci;Atilla Eryilmaz
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Abstract

In real-world networks, we regularly face the effect of propagating failures over networks, for example, rumors spread over social networks, outages spread over power networks, viruses spread over communication and biological networks. Often, these failures spread over a network of agents with unknown and potentially diverse degrees of vulnerabilities to the propagating phenomenon. In this work, we consider a general network model subject to propagating failures and develop provably fast mechanisms for learning the unknown vulnerabilities of the network with minimal cost incurred in the process. We propose an extension to the classic Independent Cascade (IC) model where we incorporate both node and edge failures with non-uniform costs. From an online learning perspective, the goal is to find an optimal policy to control where to start failures and generate samples. Therefore, we formulate a cost minimization problem with Probably-Approximately-Correct (PAC) type guarantees. As a theoretical benchmark, we design a linear programming problem using a proposed joint Bernstein inequality. Then we characterize the performance of randomized policies that use a fixed budget distribution independent of sampling history. Finally, we propose a fast Lyapunov-based online learning policy, for which we give a formal theoretical analysis. The performance of the policy are validated under extensive numerical studies for both synthetic and real-world networks.
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快速在线学习故障传播网络的漏洞
在现实世界的网络中,我们经常会面临故障在网络上传播的影响,例如,谣言在社交网络上传播,停电在电力网络上传播,病毒在通信和生物网络上传播。通常情况下,这些故障会在代理网络中传播,而代理对传播现象的脆弱性程度未知且可能各不相同。在这项工作中,我们考虑了一个受故障传播影响的通用网络模型,并开发了可证明的快速机制,以最小的成本学习网络的未知漏洞。我们提出了对经典独立级联(IC)模型的扩展,将节点和边缘故障与非均匀成本结合起来。从在线学习的角度来看,我们的目标是找到一种最优策略,以控制从何处开始故障和生成样本。因此,我们提出了一个具有 "大概正确"(PAC)类型保证的成本最小化问题。作为一个理论基准,我们利用提出的联合伯恩斯坦不等式设计了一个线性规划问题。然后,我们描述了使用与采样历史无关的固定预算分布的随机策略的性能。最后,我们提出了一种基于 Lyapunov 的快速在线学习策略,并给出了正式的理论分析。通过对合成网络和真实世界网络的大量数值研究,我们验证了该策略的性能。
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来源期刊
IEEE/ACM Transactions on Networking
IEEE/ACM Transactions on Networking 工程技术-电信学
CiteScore
8.20
自引率
5.40%
发文量
246
审稿时长
4-8 weeks
期刊介绍: The IEEE/ACM Transactions on Networking’s high-level objective is to publish high-quality, original research results derived from theoretical or experimental exploration of the area of communication/computer networking, covering all sorts of information transport networks over all sorts of physical layer technologies, both wireline (all kinds of guided media: e.g., copper, optical) and wireless (e.g., radio-frequency, acoustic (e.g., underwater), infra-red), or hybrids of these. The journal welcomes applied contributions reporting on novel experiences and experiments with actual systems.
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