Litcius/Paper detail

Introducing Symmetries to Black Box Meta Reinforcement Learning

Louis Kirsch, Sebastian Flennerhag, Hado van Hasselt, Abram L. Friesen, Junhyuk Oh, Yutian Chen

2022Proceedings of the AAAI Conference on Artificial Intelligence16 citationsDOIOpen Access PDF

Abstract

Meta reinforcement learning (RL) attempts to discover new RL algorithms automatically from environment interaction. In so-called black-box approaches, the policy and the learning algorithm are jointly represented by a single neural network. These methods are very flexible, but they tend to underperform compared to human-engineered RL algorithms in terms of generalisation to new, unseen environments. In this paper, we explore the role of symmetries in meta-generalisation. We show that a recent successful meta RL approach that meta-learns an objective for backpropagation-based learning exhibits certain symmetries (specifically the reuse of the learning rule, and invariance to input and output permutations) that are not present in typical black-box meta RL systems. We hypothesise that these symmetries can play an important role in meta-generalisation. Building off recent work in black-box supervised meta learning, we develop a black-box meta RL system that exhibits these same symmetries. We show through careful experimentation that incorporating these symmetries can lead to algorithms with a greater ability to generalise to unseen action & observation spaces, tasks, and environments.

Topics & Concepts

Homogeneous spaceReinforcement learningComputer scienceBlack boxMeta learning (computer science)Artificial intelligenceReuseMetamodelingBackpropagationMachine learningArtificial neural networkTheoretical computer scienceMathematicsEngineeringProgramming languageWaste managementGeometrySystems engineeringTask (project management)Domain Adaptation and Few-Shot LearningReinforcement Learning in RoboticsMachine Learning and Data Classification