NEAIROMay 21, 2021

On the use of feature-maps and parameter control for improved quality-diversity meta-evolution

arXiv:2105.10317v11 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of designing effective behaviour spaces in QD algorithms for robotics applications, representing an incremental advancement with specific performance gains.

The paper tackles the problem of improving Quality-Diversity (QD) meta-evolution by proposing a system with reformulated databases, generalised feature-maps, and dynamic parameter control, resulting in non-linear feature-maps yielding a 15-fold improvement in meta-fitness and enabling a robot arm to recover over 80% reach for most damages.

In Quality-Diversity (QD) algorithms, which evolve a behaviourally diverse archive of high-performing solutions, the behaviour space is a difficult design choice that should be tailored to the target application. In QD meta-evolution, one evolves a population of QD algorithms to optimise the behaviour space based on an archive-level objective, the meta-fitness. This paper proposes an improved meta-evolution system such that (i) the database used to rapidly populate new archives is reformulated to prevent loss of quality-diversity; (ii) the linear transformation of base-features is generalised to a feature-map, a function of the base-features parametrised by the meta-genotype; and (iii) the mutation rate of the QD algorithm and the number of generations per meta-generation are controlled dynamically. Experiments on an 8-joint planar robot arm compare feature-maps (linear, non-linear, and feature-selection), parameter control strategies (static, endogenous, reinforcement learning, and annealing), and traditional MAP-Elites variants, for a total of 49 experimental conditions. Results reveal that non-linear and feature-selection feature-maps yield a 15-fold and 3-fold improvement in meta-fitness, respectively, over linear feature-maps. Reinforcement learning ranks among top parameter control methods. Finally, our approach allows the robot arm to recover a reach of over 80% for most damages and at least 60% for severe damages.

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