基于智能体偏好的多智能体多目标强化学习新方法

Zeinab Daavarani Asl, V. Derhami, Mehdi Yazdian-Dehkordi
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引用次数: 3

摘要

强化学习(RL)是解决马尔可夫决策过程(MDP)的一种强大的机器学习范式。传统的强化学习算法旨在解决单目标问题,但现实世界中许多问题都有多个相互冲突的目标。近年来,多目标强化学习(MORL)算法被提出用于解决多目标问题,该算法采用奖励向量代替标量奖励信号。在MORL中,由于目标冲突,没有一个最优解,并且将学习一组称为Pareto Front的解。本文提出了一种新的多智能体方法,该方法使用所有智能体的共享q表来解决双目标问题。但是,每个代理都根据自己的偏好选择操作。这些偏好是彼此不同的,代理基于这些偏好达成帕累托前解。该方法易于理解,计算量低。此外,在找到Pareto Front集合后,我们可以很容易地跟踪策略。仿真结果表明,该方法在学习速度方面优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new approach on multi-agent Multi-Objective Reinforcement Learning based on agents' preferences
Reinforcement Learning (RL) is a powerful machine learning paradigm for solving Markov Decision Process (MDP). Traditional RL algorithms aim to solve one-objective problems, but many real-world problems have more than one objective which conflict each other. In recent years, Multi-Objective Reinforcement Learning (MORL) algorithms, which employ a reward vector instead of a scalar reward signal, have been proposed to solve multi-objective problems. In MORL, because of conflicting objectives, there is no one optimal solution and a set of solutions named Pareto Front will be learned. In this paper, we proposed a new multi-agent method, which uses a shared Q-table for all agents to solve bi-objective problems. However, each agent selects actions based on its preference. These preferences are different with each other and the agents reach to Pareto Front solutions based on this preferences. The proposed method is simple in understanding and its computational cost is very low. Moreover, after finding the Pareto Front set, we can easily track the policy. Simulation results show that our proposed method outperforms the available methods in the term of learning speed.
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