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Towards robust and domain agnostic reinforcement learning competitions

Authors :
Guss, William Hebgen
Milani, Stephanie
Topin, Nicholay
Houghton, Brandon
Mohanty, Sharada
Melnik, Andrew
Harter, Augustin
Buschmaas, Benoit
Jaster, Bjarne
Berganski, Christoph
Heitkamp, Dennis
Henning, Marko
Ritter, Helge
Wu, Chengjie
Hao, Xiaotian
Lu, Yiming
Mao, Hangyu
Mao, Yihuan
Wang, Chao
Opanowicz, Michal
Kanervisto, Anssi
Schraner, Yanick
Scheller, Christian
Zhou, Xiren
Liu, Lu
Nishio, Daichi
Tsuneda, Toi
Ramanauskas, Karolis
Juceviciute, Gabija
Guss, William Hebgen
Milani, Stephanie
Topin, Nicholay
Houghton, Brandon
Mohanty, Sharada
Melnik, Andrew
Harter, Augustin
Buschmaas, Benoit
Jaster, Bjarne
Berganski, Christoph
Heitkamp, Dennis
Henning, Marko
Ritter, Helge
Wu, Chengjie
Hao, Xiaotian
Lu, Yiming
Mao, Hangyu
Mao, Yihuan
Wang, Chao
Opanowicz, Michal
Kanervisto, Anssi
Schraner, Yanick
Scheller, Christian
Zhou, Xiren
Liu, Lu
Nishio, Daichi
Tsuneda, Toi
Ramanauskas, Karolis
Juceviciute, Gabija
Publication Year :
2021

Abstract

Reinforcement learning competitions have formed the basis for standard research benchmarks, galvanized advances in the state-of-the-art, and shaped the direction of the field. Despite this, a majority of challenges suffer from the same fundamental problems: participant solutions to the posed challenge are usually domain-specific, biased to maximally exploit compute resources, and not guaranteed to be reproducible. In this paper, we present a new framework of competition design that promotes the development of algorithms that overcome these barriers. We propose four central mechanisms for achieving this end: submission retraining, domain randomization, desemantization through domain obfuscation, and the limitation of competition compute and environment-sample budget. To demonstrate the efficacy of this design, we proposed, organized, and ran the MineRL 2020 Competition on Sample-Efficient Reinforcement Learning. In this work, we describe the organizational outcomes of the competition and show that the resulting participant submissions are reproducible, non-specific to the competition environment, and sample/resource efficient, despite the difficult competition task.<br />Comment: 20 pages, several figures, published PMLR

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1269555361
Document Type :
Electronic Resource