通信目的地匿名化中地址随机化分布式控制的多智能体学习方法

Keita Sugiyama, Naoki Fukuta
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引用次数: 0

摘要

在网络中保持通信目的地的匿名性是需要改进的重要问题之一,因为嗅探数据包仍然可能是主要威胁,特别是在本地网络系统上。2017年,Wang等人提出U-TRI作为在这种情况下以可接受的开销提供更好的匿名性的方法之一。然而,正如他们提到的,U-TRI仍然存在允许攻击者利用他们观察到的流量趋势的问题。在本文中,我们提出了一种解决这一问题的方法,通过引入多智能体学习来自主协调多个终端主机和仿真环境来分析它。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multiagent Learning Approach for Distributed Control of Address Randomization in Communication Destination Anonymization
Keeping anonymity of communication destination in networking is one of the important issues to be improved since sniffing packets can still be a major threat especially on a local network system. In 2017, U-TRI has been proposed by Wang et al. as one of the approaches to provide better anonymity in such a context with acceptable overheads. However, as they mentioned, U-TRI still suffers from the issues that allow attackers to utilize their observed traffic trends. In this paper, we present an approach to solve this issue by introducing a multi-agent learning for autonomously coordinating multiple end-hosts and a simulation environment to analyze it.
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