Minimal Value-Equivalent Partial Models for Scalable and Robust Planning in Lifelong Reinforcement Learning
Safa Alver, Doina Precup

TL;DR
This paper introduces minimal value-equivalent partial models that focus only on relevant environment aspects, enabling scalable, robust planning in lifelong reinforcement learning, supported by theoretical analysis and empirical validation.
Contribution
It proposes a new class of models that model only relevant environment aspects, demonstrating scalability and robustness benefits for lifelong reinforcement learning.
Findings
Models improve planning scalability.
Models enhance robustness to distribution shifts.
Empirical results confirm theoretical advantages.
Abstract
Learning models of the environment from pure interaction is often considered an essential component of building lifelong reinforcement learning agents. However, the common practice in model-based reinforcement learning is to learn models that model every aspect of the agent's environment, regardless of whether they are important in coming up with optimal decisions or not. In this paper, we argue that such models are not particularly well-suited for performing scalable and robust planning in lifelong reinforcement learning scenarios and we propose new kinds of models that only model the relevant aspects of the environment, which we call "minimal value-equivalent partial models". After providing a formal definition for these models, we provide theoretical results demonstrating the scalability advantages of performing planning with such models and then perform experiments to empirically…
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Taxonomy
TopicsReinforcement Learning in Robotics
