cs.AI updates on arXiv.org 08月21日
Online Incident Response Planning under Model Misspecification through Bayesian Learning and Belief Quantization
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本文提出一种名为MOBAL的在线网络安全响应规划方法,针对信息不完整或错误时快速决策的需求,通过迭代优化模型,实现动态响应规划,并在CAGE-2基准测试中表现优异。

arXiv:2508.14385v1 Announce Type: cross Abstract: Effective responses to cyberattacks require fast decisions, even when information about the attack is incomplete or inaccurate. However, most decision-support frameworks for incident response rely on a detailed system model that describes the incident, which restricts their practical utility. In this paper, we address this limitation and present an online method for incident response planning under model misspecification, which we call MOBAL: Misspecified Online Bayesian Learning. MOBAL iteratively refines a conjecture about the model through Bayesian learning as new information becomes available, which facilitates model adaptation as the incident unfolds. To determine effective responses online, we quantize the conjectured model into a finite Markov model, which enables efficient response planning through dynamic programming. We prove that Bayesian learning is asymptotically consistent with respect to the information feedback. Additionally, we establish bounds on misspecification and quantization errors. Experiments on the CAGE-2 benchmark show that MOBAL outperforms the state of the art in terms of adaptability and robustness to model misspecification.

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网络安全 MOBAL 在线响应 模型优化
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