用于web服务器防御的上下文多武装强盗

T. Jung, Sylvain Martin, D. Ernst, G. Leduc
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引用次数: 2

摘要

在本文中,我们认为上下文多武装强盗算法可以为设计计算机网络和相关任务的自学习安全模块开辟道路。本文有两个贡献:一个是概念上的贡献,一个是算法上的贡献。概念上的贡献是将防止基于http的web服务器攻击的现实问题表述为一次性顺序学习问题,即上下文多武装强盗。我们的第二个贡献是提出了CMABFAS,这是一种新的计算成本非常低的算法,用于一般上下文多臂强盗学习,专门针对具有有限动作的域。我们演示了CMABFAS如何用于为web服务器设计一个完全自学习的元过滤器,该过滤器不依赖于最终用户的反馈(即,不需要标记数据),并首先报告令人信服的模拟结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contextual multi-armed bandits for web server defense
In this paper we argue that contextual multi-armed bandit algorithms could open avenues for designing self-learning security modules for computer networks and related tasks. The paper has two contributions: a conceptual and an algorithmical one. The conceptual contribution is to formulate the real-world problem of preventing HTTP-based attacks on web servers as a one-shot sequential learning problem, namely as a contextual multi-armed bandit. Our second contribution is to present CMABFAS, a new and computationally very cheap algorithm for general contextual multi-armed bandit learning that specifically targets domains with finite actions. We illustrate how CMABFAS could be used to design a fully self-learning meta filter for web servers that does not rely on feedback from the end-user (i.e., does not require labeled data) and report first convincing simulation results.
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