PNPSC网络玩家策略的深度强化学习技术

E. M. Bearss, Mikel D. Petty
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引用次数: 0

摘要

带有玩家、策略和成本的Petri网(PNPSC)是Petri网的扩展,专门用于模拟网络攻击。PNPSC的形式包括竞争“玩家”(即攻击者和防御者)的策略表示。为PNPSC网络中的玩家开发性能良好的策略对游戏树和强化学习算法都具有挑战性。本文提出了一种将PNPSC网络玩家策略建模为游戏树的方法,并结合蒙特卡罗树搜索(MCTS)和深度强化学习来有效地改进玩家的策略。将该组合方法的性能与基于深度q -学习的标准动作选择算法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Reinforcement Learning Technique for PNPSC Net Player Strategies
Petri Nets with Players, Strategies, and Costs (PNPSC) is an extension of Petri nets specifically designed to model cyberattacks. The PNPSC formalism includes a representation of the strategies for the competing "players," i.e., the attacker and defender. Developing well-performing strategies for players in PNPSC nets is challenging for both game tree and reinforcement learning algorithms. This paper presents a method of modeling the PNPSC net player strategies as a game tree and using a combination of Monte Carlo Tree Search (MCTS) and deep reinforcement learning to effectively improve the players' strategies. The performance of this combination method is compared with standard action selection with the deep Q-learning algorithm.
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