2021
DOI: 10.48550/arxiv.2109.06826
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Few-shot Quality-Diversity Optimization

Achkan Salehi,
Alexandre Coninx,
Stephane Doncieux

Abstract: In the past few years, a considerable amount of research has been dedicated to the exploitation of previous learning experiences and the design of Few-shot and Meta Learning approaches, in problem domains ranging from Computer Vision to Reinforcement Learning based control. A notable exception, where to the best of our knowledge, little to no effort has been made in this direction is Quality-Diversity (QD) optimisation. QD methods have been shown to be effective tools in dealing with deceptive minima and spars… Show more

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“…Current work in RL/QD in general only handles one of those aspects, and robust methods for jointly addressing those problems are still lacking. For example, many systems that incorporate some notion of meta-learning [8,2,9], or system identification [3] are able to adapt to unseen tasks with minimal adaptation. However, to our knowledge, none of these methods address the problem of irregular actions and observations.…”
Section: Introductionmentioning
confidence: 99%
“…Current work in RL/QD in general only handles one of those aspects, and robust methods for jointly addressing those problems are still lacking. For example, many systems that incorporate some notion of meta-learning [8,2,9], or system identification [3] are able to adapt to unseen tasks with minimal adaptation. However, to our knowledge, none of these methods address the problem of irregular actions and observations.…”
Section: Introductionmentioning
confidence: 99%