基于线性函数逼近的Leader-Follower MDP中可证明的高效无模型RL

A. Ghosh
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摘要

我们考虑一个多代理情景MDP设置,其中一个代理(领导者)在情节的每一步采取行动,然后是另一个代理(追随者)。状态演化和奖励取决于领导者和追随者的共同行动对。这种类型的交互可以在许多领域中找到应用,例如智能电网、机制设计、安全性和政策制定。我们感兴趣的是如何在强盗反馈设置下为两个具有可证明性能保证的玩家学习策略。我们专注于领导者和追随者都{\em是非短视}的设置,即他们都寻求在整个事件中最大化他们的奖励,并考虑一个线性MDP,它可以建模连续状态空间,这在许多强化学习应用中非常常见。我们提出了一种{\em无模型}强化学习算法,并表明$\tilde{\mathcal{O}}(\sqrt{d^3H^3T})$对于领导者和追随者都可以实现后悔边界,其中$d$是特征映射的维度,$H$是情节的长度,$T$是强盗反馈信息设置下的总步数。因此,即使状态数变为无穷大,我们的结果仍然成立。该算法基于对LSVI-UCB算法的{\em新颖}适应。具体来说,我们将标准贪婪策略(作为最佳响应)替换为领导者和追随者的软最大策略。这是建立价值函数统一集中界的关键。据我们所知,这是具有函数近似的非近视眼追随者的马尔可夫博弈的第一个亚线性遗憾界保证。
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Provably Efficient Model-free RL in Leader-Follower MDP with Linear Function Approximation
We consider a multi-agent episodic MDP setup where an agent (leader) takes action at each step of the episode followed by another agent (follower). The state evolution and rewards depend on the joint action pair of the leader and the follower. Such type of interactions can find applications in many domains such as smart grids, mechanism design, security, and policymaking. We are interested in how to learn policies for both the players with provable performance guarantee under a bandit feedback setting. We focus on a setup where both the leader and followers are {\em non-myopic}, i.e., they both seek to maximize their rewards over the entire episode and consider a linear MDP which can model continuous state-space which is very common in many RL applications. We propose a {\em model-free} RL algorithm and show that $\tilde{\mathcal{O}}(\sqrt{d^3H^3T})$ regret bounds can be achieved for both the leader and the follower, where $d$ is the dimension of the feature mapping, $H$ is the length of the episode, and $T$ is the total number of steps under the bandit feedback information setup. Thus, our result holds even when the number of states becomes infinite. The algorithm relies on {\em novel} adaptation of the LSVI-UCB algorithm. Specifically, we replace the standard greedy policy (as the best response) with the soft-max policy for both the leader and the follower. This turns out to be key in establishing uniform concentration bound for the value functions. To the best of our knowledge, this is the first sub-linear regret bound guarantee for the Markov games with non-myopic followers with function approximation.
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