The Bandit’s States: Modeling State Selection for Stateful Network Fuzzing as Multi-armed Bandit Problem

模糊测试 有状态防火墙 计算机科学 多武装匪徒 选择(遗传算法) 国家(计算机科学) 人工智能 机器学习 网络数据包 计算机安全 软件 算法 后悔 程序设计语言
作者
Anne Borcherding,Mark Giraud,Ian Fitzgerald,Jürgen Beyerer
标识
DOI:10.1109/eurospw59978.2023.00043
摘要

Network interfaces of Industrial Control Systems are a common entry point for attackers, and thus need to be thoroughly tested for vulnerabilities. One way to perform such tests is with network fuzzers, which randomly mutate network packets to induce unexpected behavior and vulnerabilities. Highly stateful network protocols pose a particular challenge to fuzzers, since a fuzzer needs to be aware of the states in order to find deep vulnerabilities. Even if a fuzzer is aware of the states of a stateful network protocol, there are still several challenges to overcome. The challenge we focus on is deciding which state to test next. To make this decision, the fuzzer needs to strike a balance between exploiting known states and exploring states not yet tested. We propose to model this exploration versus exploitation dilemma using a Multi-armed Bandit. In this work, we present two modeling approaches and preliminary experiments. We choose to model the state selection problem with (I) a stochastic Multi-armed Bandit, and (II) an adversarial Multi-armed Bandit. The latter takes into account that coverage can only be discovered once, and that the underlying reward probability therefore decreases over time. Although the adversarial Multi-armed Bandit models the state selection problem more accurately, our experiments show that both approaches lead to statistically indistinguishable fuzzer performance. Furthermore, we show that the baseline fuzzer AFLNet leads to significantly better results in terms of coverage. Building on these unintuitive preliminary results, we aim to investigate the behavior of the agents in more detail, to include additional modeling approaches, and to use additional Systems under Test for the evaluation.

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