LGMLJul 13, 2020

A Provably Efficient Sample Collection Strategy for Reinforcement Learning

arXiv:2007.06437v220 citations
AI Analysis

This work addresses the challenge of efficient sample collection in reinforcement learning, offering a general-purpose method that can be applied to various objective-specific problems, though it is incremental as it builds on existing exploration methods.

The paper tackles the exploration-exploitation trade-off in online reinforcement learning by proposing a decoupled approach with an objective-specific algorithm for sample prescriptions and an objective-agnostic strategy for fast sample collection, achieving improved sample complexity guarantees in settings like model estimation and sparse reward discovery.

One of the challenges in online reinforcement learning (RL) is that the agent needs to trade off the exploration of the environment and the exploitation of the samples to optimize its behavior. Whether we optimize for regret, sample complexity, state-space coverage or model estimation, we need to strike a different exploration-exploitation trade-off. In this paper, we propose to tackle the exploration-exploitation problem following a decoupled approach composed of: 1) An "objective-specific" algorithm that (adaptively) prescribes how many samples to collect at which states, as if it has access to a generative model (i.e., a simulator of the environment); 2) An "objective-agnostic" sample collection exploration strategy responsible for generating the prescribed samples as fast as possible. Building on recent methods for exploration in the stochastic shortest path problem, we first provide an algorithm that, given as input the number of samples $b(s,a)$ needed in each state-action pair, requires $\tilde{O}(B D + D^{3/2} S^2 A)$ time steps to collect the $B=\sum_{s,a} b(s,a)$ desired samples, in any unknown communicating MDP with $S$ states, $A$ actions and diameter $D$. Then we show how this general-purpose exploration algorithm can be paired with "objective-specific" strategies that prescribe the sample requirements to tackle a variety of settings -- e.g., model estimation, sparse reward discovery, goal-free cost-free exploration in communicating MDPs -- for which we obtain improved or novel sample complexity guarantees.

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