Assessing Quality-Diversity Neuro-Evolution Algorithms Performance in Hard Exploration Problems
November 24, 2022 ยท Declared Dead ยท ๐ arXiv.org
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Authors
Felix Chalumeau, Thomas Pierrot, Valentin Macรฉ, Arthur Flajolet, Karim Beguir, Antoine Cully, Nicolas Perrin-Gilbert
arXiv ID
2211.13742
Category
cs.NE: Neural & Evolutionary
Cross-listed
cs.AI
Citations
9
Venue
arXiv.org
Last Checked
4 months ago
Abstract
A fascinating aspect of nature lies in its ability to produce a collection of organisms that are all high-performing in their niche. Quality-Diversity (QD) methods are evolutionary algorithms inspired by this observation, that obtained great results in many applications, from wing design to robot adaptation. Recently, several works demonstrated that these methods could be applied to perform neuro-evolution to solve control problems in large search spaces. In such problems, diversity can be a target in itself. Diversity can also be a way to enhance exploration in tasks exhibiting deceptive reward signals. While the first aspect has been studied in depth in the QD community, the latter remains scarcer in the literature. Exploration is at the heart of several domains trying to solve control problems such as Reinforcement Learning and QD methods are promising candidates to overcome the challenges associated. Therefore, we believe that standardized benchmarks exhibiting control problems in high dimension with exploration difficulties are of interest to the QD community. In this paper, we highlight three candidate benchmarks and explain why they appear relevant for systematic evaluation of QD algorithms. We also provide open-source implementations in Jax allowing practitioners to run fast and numerous experiments on few compute resources.
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