LGAIOCMLJul 10, 2018

Is Q-learning Provably Efficient?

arXiv:1807.03765v1909 citations
Originality Highly original
AI Analysis

This solves a fundamental theoretical question in reinforcement learning, showing model-free methods can be as efficient as model-based ones, which is foundational for the field.

The paper tackles the problem of whether model-free reinforcement learning algorithms like Q-learning can be sample-efficient, proving that Q-learning with UCB exploration achieves regret ˜O(√(H^3 SAT)), matching optimal model-based approaches up to a factor.

Model-free reinforcement learning (RL) algorithms, such as Q-learning, directly parameterize and update value functions or policies without explicitly modeling the environment. They are typically simpler, more flexible to use, and thus more prevalent in modern deep RL than model-based approaches. However, empirical work has suggested that model-free algorithms may require more samples to learn [Deisenroth and Rasmussen 2011, Schulman et al. 2015]. The theoretical question of "whether model-free algorithms can be made sample efficient" is one of the most fundamental questions in RL, and remains unsolved even in the basic scenario with finitely many states and actions. We prove that, in an episodic MDP setting, Q-learning with UCB exploration achieves regret $\tilde{O}(\sqrt{H^3 SAT})$, where $S$ and $A$ are the numbers of states and actions, $H$ is the number of steps per episode, and $T$ is the total number of steps. This sample efficiency matches the optimal regret that can be achieved by any model-based approach, up to a single $\sqrt{H}$ factor. To the best of our knowledge, this is the first analysis in the model-free setting that establishes $\sqrt{T}$ regret without requiring access to a "simulator."

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes