基于决策-估计系数的强化学习统一算法:PAC、无奖励、偏好学习及更多

Unified algorithms for RL with Decision-Estimation Coefficients: PAC, reward-free, preference-based learning and beyond

Annals of Statistics · 2025
被引 5 · 同刊同年前 6%
ABS 4★

中文导读

本文提出一个统一算法框架,基于广义决策-估计系数,能处理无遗憾、PAC、无奖励、模型估计和偏好学习等多种强化学习目标,并给出样本复杂度下界。

Abstract

Modern Reinforcement Learning (RL) is more than just learning the optimal policy; alternative learning goals such as exploring the environment, estimating the underlying model and learning from preference feedback are all of practical importance. While provably sample-efficient algorithms for each specific goal have been proposed, these algorithms often depend strongly on the particular learning goal, and thus admit different structures correspondingly. It is an urging open question whether these learning goals can rather be tackled by a single unified algorithm. We make progress on this question by developing a unified algorithm framework for a large class of learning goals, building on the Decision-Estimation Coefficient (DEC) framework. Our framework handles many learning goals such as no-regret RL, PAC RL, reward-free learning, model estimation and preference-based learning, all by simply instantiating the same generic complexity measure called “Generalized DEC,” and a corresponding generic algorithm. The generalized DEC also yields a sample complexity lower bound for each specific learning goal. As applications, we propose “decouplable representation” as a natural sufficient condition for bounding generalized DECs, and use it to obtain many new sample-efficient results (and recover existing results) for a wide range of learning goals and problem classes as direct corollaries. Finally, as a connection, we reanalyze two existing optimistic model-based algorithms based on posterior sampling and maximum likelihood estimation, showing that they enjoy sample complexity bounds under similar structural conditions as the DEC.

强化学习决策-估计系数样本复杂度偏好学习无奖励学习