迈向安全的多智能体深度强化学习:对抗性攻击与对策

Changgang Zheng, Chen Zhen, Haiyong Xie, Shufan Yang
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引用次数: 0

摘要

强化学习(RL)是解决复杂序列决策问题最流行的方法之一。深度强化学习需要仔细感知环境,通过软代理选择算法和超参数,同时预测最佳行动应该是什么。RL计算范式正逐渐成为众多领域的流行解决方案。然而,许多部署决策,如分布式计算的安全性,网络通信的防御系统和算法细节,如批量更新的频率和时间步数,通常不被视为一个集成系统。这使得在实际问题中应用深度强化学习时难以进行适当的漏洞管理。基于这些原因,我们提出了一个框架,允许用户根据人类感知专注于推理、信任和可解释性的算法,然后探索潜在的威胁,特别是对抗性攻击和对策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Secure Multi-Agent Deep Reinforcement Learning: Adversarial Attacks and Countermeasures
Reinforcement Learning (RL) is one of the most popular methods for solving complex sequential decision-making problems. Deep RL needs careful sensing of the environment, selecting algorithms as well as hyper-parameters via soft agents, and simultaneously predicting which best actions should be. The RL computing paradigm is progressively becoming a popular solution in numerous fields. However, many deployment decisions, such as security of distributed computing, the defence system of network communication and algorithms details such as frequency of batch updating and the number of time steps, are typically not treated as an integrated system. This makes it difficult to have appropriate vulnerability management when applying deep RL in real life problems. For these reasons, we propose a framework that allows users to focus on the algorithm of reasoning, trust, and explainability in accordance with human perception, followed by exploring potential threats, especially adversarial attacks and countermeasures.
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