{"title":"Provably Efficient Generalized Lagrangian Policy Optimization for Safe Multi-Agent Reinforcement Learning","authors":"Dongsheng Ding, Xiaohan Wei, Zhuoran Yang, Zhaoran Wang, Mihailo R. Jovanovi'c","doi":"10.48550/arXiv.2306.00212","DOIUrl":null,"url":null,"abstract":"We examine online safe multi-agent reinforcement learning using constrained Markov games in which agents compete by maximizing their expected total rewards under a constraint on expected total utilities. Our focus is confined to an episodic two-player zero-sum constrained Markov game with independent transition functions that are unknown to agents, adversarial reward functions, and stochastic utility functions. For such a Markov game, we employ an approach based on the occupancy measure to formulate it as an online constrained saddle-point problem with an explicit constraint. We extend the Lagrange multiplier method in constrained optimization to handle the constraint by creating a generalized Lagrangian with minimax decision primal variables and a dual variable. Next, we develop an upper confidence reinforcement learning algorithm to solve this Lagrangian problem while balancing exploration and exploitation. Our algorithm updates the minimax decision primal variables via online mirror descent and the dual variable via projected gradient step and we prove that it enjoys sublinear rate $ O((|X|+|Y|) L \\sqrt{T(|A|+|B|)}))$ for both regret and constraint violation after playing $T$ episodes of the game. Here, $L$ is the horizon of each episode, $(|X|,|A|)$ and $(|Y|,|B|)$ are the state/action space sizes of the min-player and the max-player, respectively. To the best of our knowledge, we provide the first provably efficient online safe reinforcement learning algorithm in constrained Markov games.","PeriodicalId":268449,"journal":{"name":"Conference on Learning for Dynamics & Control","volume":"10 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-05-31","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Conference on Learning for Dynamics & Control","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.48550/arXiv.2306.00212","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 1
Abstract
We examine online safe multi-agent reinforcement learning using constrained Markov games in which agents compete by maximizing their expected total rewards under a constraint on expected total utilities. Our focus is confined to an episodic two-player zero-sum constrained Markov game with independent transition functions that are unknown to agents, adversarial reward functions, and stochastic utility functions. For such a Markov game, we employ an approach based on the occupancy measure to formulate it as an online constrained saddle-point problem with an explicit constraint. We extend the Lagrange multiplier method in constrained optimization to handle the constraint by creating a generalized Lagrangian with minimax decision primal variables and a dual variable. Next, we develop an upper confidence reinforcement learning algorithm to solve this Lagrangian problem while balancing exploration and exploitation. Our algorithm updates the minimax decision primal variables via online mirror descent and the dual variable via projected gradient step and we prove that it enjoys sublinear rate $ O((|X|+|Y|) L \sqrt{T(|A|+|B|)}))$ for both regret and constraint violation after playing $T$ episodes of the game. Here, $L$ is the horizon of each episode, $(|X|,|A|)$ and $(|Y|,|B|)$ are the state/action space sizes of the min-player and the max-player, respectively. To the best of our knowledge, we provide the first provably efficient online safe reinforcement learning algorithm in constrained Markov games.
我们使用约束马尔可夫博弈来检验在线安全多智能体强化学习,其中智能体在期望总效用的约束下通过最大化其期望总奖励来竞争。我们的重点局限于一个情景二人零和约束马尔可夫博弈,具有独立的转移函数(未知的代理)、对抗奖励函数和随机效用函数。对于这样的马尔可夫博弈,我们采用基于占用度量的方法将其表述为带有显式约束的在线约束鞍点问题。通过建立一个具有极大极小决策原变量和对偶变量的广义拉格朗日函数,将约束优化中的拉格朗日乘子方法推广到处理约束问题。接下来,我们开发了一种上置信度强化学习算法来解决这个拉格朗日问题,同时平衡了探索和利用。我们的算法通过在线镜像下降更新极大极小决策原始变量,通过投影梯度步进更新对偶变量,我们证明了它在玩了$T$集的游戏后,对于后悔和约束违反都具有次线性速率$ O((|X|+|Y|) L \sqrt{T(|A|+|B|)}))$。这里,$L$是每个情节的视界,$(|X|,|A|)$和$(|Y|,|B|)$分别是最小玩家和最大玩家的状态/行动空间大小。据我们所知,我们在约束马尔可夫博弈中提供了第一个可证明有效的在线安全强化学习算法。