TL;DR
This paper introduces Deep-Grid MAP-Elites, a novel variant of the MAP-Elites algorithm that uses an archive of similar solutions to improve robustness and sample efficiency in noisy domains, especially in robotics applications.
Contribution
The paper presents Deep-Grid MAP-Elites, a new approach that enhances MAP-Elites by leveraging archives of similar solutions to handle noise without extensive sampling.
Findings
More resilient to noise on behavioral descriptors
Achieves competitive fitness optimization
More sample-efficient than existing methods
Abstract
Quality-Diversity optimisation algorithms enable the evolution of collections of both high-performing and diverse solutions. These collections offer the possibility to quickly adapt and switch from one solution to another in case it is not working as expected. It therefore finds many applications in real-world domain problems such as robotic control. However, QD algorithms, like most optimisation algorithms, are very sensitive to uncertainty on the fitness function, but also on the behavioural descriptors. Yet, such uncertainties are frequent in real-world applications. Few works have explored this issue in the specific case of QD algorithms, and inspired by the literature in Evolutionary Computation, mainly focus on using sampling to approximate the "true" value of the performances of a solution. However, sampling approaches require a high number of evaluations, which in many…
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