Model Selection in Reinforcement Learning with General Function Approximations

Avishek Ghosh, Sayak Ray Chowdhury
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引用次数: 1

Abstract

We consider model selection for classic Reinforcement Learning (RL) environments -- Multi Armed Bandits (MABs) and Markov Decision Processes (MDPs) -- under general function approximations. In the model selection framework, we do not know the function classes, denoted by $\mathcal{F}$ and $\mathcal{M}$, where the true models -- reward generating function for MABs and and transition kernel for MDPs -- lie, respectively. Instead, we are given $M$ nested function (hypothesis) classes such that true models are contained in at-least one such class. In this paper, we propose and analyze efficient model selection algorithms for MABs and MDPs, that \emph{adapt} to the smallest function class (among the nested $M$ classes) containing the true underlying model. Under a separability assumption on the nested hypothesis classes, we show that the cumulative regret of our adaptive algorithms match to that of an oracle which knows the correct function classes (i.e., $\cF$ and $\cM$) a priori. Furthermore, for both the settings, we show that the cost of model selection is an additive term in the regret having weak (logarithmic) dependence on the learning horizon $T$.
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基于一般函数逼近的强化学习模型选择
我们考虑经典强化学习(RL)环境的模型选择-多武装强盗(MABs)和马尔可夫决策过程(mdp) -在一般函数近似下。在模型选择框架中,我们不知道用$\mathcal{F}$和$\mathcal{M}$表示的函数类,它们分别是真正的模型——mab的奖励生成函数和mdp的转换内核。相反,我们得到$M$嵌套函数(假设)类,这样真实的模型至少包含在一个这样的类中。在本文中,我们提出并分析了mab和mdp的有效模型选择算法,该算法\emph{适应}到包含真实底层模型的最小函数类(在嵌套的$M$类中)。在嵌套假设类的可分性假设下,我们证明了自适应算法的累积遗憾与先验地知道正确函数类(即$\cF$和$\cM$)的oracle的累积遗憾相匹配。此外,对于这两种设置,我们表明模型选择的成本是遗憾中的一个附加项,对学习视界具有弱(对数)依赖性$T$。
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