receive: Reinforcement Learning-Controlled Effective Ingress Filtering

Hauke Heseding, M. Zitterbart
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引用次数: 0

摘要

容量分布式拒绝服务攻击通过使用任意大容量流量阻塞网络链接来强行破坏在线服务的可用性。这种蛮力方法对上游网络基础设施有附带影响,使早期攻击流量清除成为关键目标。为了减少基础设施负载并保持服务可用性,我们引入了ReCEIF,这是一种利用深度强化学习的基于规则的早期入口过滤的拓扑无关缓解策略。receiif利用分层重击器监视流量分布并检测发送大流量的子网。随后,深度强化学习将分层重击者提炼成有效的过滤规则,这些规则可以向上游传播,以丢弃来自攻击系统的流量。当利用快速三元内容可寻址内存时,评估所有过滤规则只需要一个时钟周期,这在软件定义的网络中通常可用。为了概述我们方法的有效性,我们对基于强化学习的路由器节流进行了比较评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ReCEIF: Reinforcement Learning-Controlled Effective Ingress Filtering
Volumetric Distributed Denial of Service attacks forcefully disrupt the availability of online services by congesting network links with arbitrary high-volume traffic. This brute force approach has collateral impact on the upstream network infrastructure, making early attack traffic removal a key objective. To reduce infrastructure load and maintain service availability, we introduce ReCEIF, a topology-independent mitigation strategy for early, rule-based ingress filtering leveraging deep reinforcement learning. ReCEIF utilizes hierarchical heavy hitters to monitor traffic distribution and detect subnets that are sending high-volume traffic. Deep reinforcement learning subsequently serves to refine hierarchical heavy hitters into effective filter rules that can be propagated upstream to discard traffic originating from attacking systems. Evaluating all filter rules requires only a single clock cycle when utilizing fast ternary content-addressable memory, which is commonly available in software defined networks. To outline the effectiveness of our approach, we conduct a comparative evaluation to reinforcement learning-based router throttling.
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