信息受限环境下的无自我模型学习与外部奖励学习

Prachi Pratyusha Sahoo;Kyriakos G. Vamvoudakis
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引用次数: 0

摘要

在本文中,我们提供了一个无模型强化学习(RL)框架,该框架依赖于内部强化信号,称为自无模型强化学习(self-model-free RL),用于学习代理,这些代理会以丢包和/或恶意代理的干扰攻击的形式丢失强化信号。该框架以目标网络的形式嵌入了一种纠正机制,以补偿信息损失并产生最优和稳定的策略。它还提供了一种权衡方案,当强化信号丢失时,使用目标网络重建奖励,而当真正的强化信号可用时,使用真正的强化信号。尽管强化信号中存在部分信息损失,但仍能保证平衡点的稳定性。最后,仿真结果验证了所提工作的有效性。
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Self-Model-Free Learning Versus Learning With External Rewards in Information Constrained Environments
In this article, we provide a model-free reinforcement learning (RL) framework that relies on internal reinforcement signals, called self-model-free RL, for learning agents that experience loss of the reinforcement signals in the form of packet drops and/or jamming attacks by malicious agents. The framework embeds a correcting mechanism in the form of a goal network to compensate for information loss and produce optimal and stabilizing policies. It also provides a trade-off scheme that reconstructs the reward using a goal network whenever the reinforcement signals are lost but utilizes true reinforcement signals when they are available. The stability of the equilibrium point is guaranteed despite fractional information loss in the reinforcement signals. Finally, simulation results validate the efficacy of the proposed work.
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