Back to Search Start Over

Meta Arcade: A Configurable Environment Suite for Meta-Learning

Authors :
Staley, Edward W.
Ashcraft, Chace
Stoler, Benjamin
Markowitz, Jared
Vallabha, Gautam
Ratto, Christopher
Katyal, Kapil D.
Publication Year :
2021

Abstract

Most approaches to deep reinforcement learning (DRL) attempt to solve a single task at a time. As a result, most existing research benchmarks consist of individual games or suites of games that have common interfaces but little overlap in their perceptual features, objectives, or reward structures. To facilitate research into knowledge transfer among trained agents (e.g. via multi-task and meta-learning), more environment suites that provide configurable tasks with enough commonality to be studied collectively are needed. In this paper we present Meta Arcade, a tool to easily define and configure custom 2D arcade games that share common visuals, state spaces, action spaces, game components, and scoring mechanisms. Meta Arcade differs from prior environments in that both task commonality and configurability are prioritized: entire sets of games can be constructed from common elements, and these elements are adjustable through exposed parameters. We include a suite of 24 predefined games that collectively illustrate the possibilities of this framework and discuss how these games can be configured for research applications. We provide several experiments that illustrate how Meta Arcade could be used, including single-task benchmarks of predefined games, sample curriculum-based approaches that change game parameters over a set schedule, and an exploration of transfer learning between games.<br />Comment: 17 pages, 6 figures, 6 tables, extended version of an accepted paper to NeurIPS DRL Workshop 2021

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2112.00583
Document Type :
Working Paper