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Scaling MAP-Elites to deep neuroevolution

Cédric Colas, Vashisht Madhavan, Joost Huizinga, Jeff Clune

202048 citationsDOIOpen Access PDF

Abstract

Quality-Diversity (QD) algorithms, and MAP-Elites (ME) in particular, have proven very useful for a broad range of applications including enabling real robots to recover quickly from joint damage, solving strongly deceptive maze tasks or evolving robot morphologies to discover new gaits. However, present implementations of ME and other QD algorithms seem to be limited to low-dimensional controllers with far fewer parameters than modern deep neural network models. In this paper, we propose to leverage the efficiency of Evolution Strategies (ES) to scale MAP-Elites to high-dimensional controllers parameterized by large neural networks. We design and evaluate a new hybrid algorithm called MAP-Elites with Evolution Strategies (ME-ES) for post-damage recovery in a difficult high-dimensional control task where traditional ME fails. Additionally, we show that ME-ES performs efficient exploration, on par with state-of-the-art exploration algorithms in high-dimensional control tasks with strongly deceptive rewards.

Topics & Concepts

NeuroevolutionComputer scienceArtificial intelligenceArtificial neural networkLeverage (statistics)Task (project management)RobotImplementationDeep neural networksDeep learningEvolutionary roboticsRange (aeronautics)Parameterized complexityScale (ratio)Machine learningScalingRoboticsControl (management)ScalabilityBenchmark (surveying)Task analysisEvolutionary algorithmRobustificationHybrid systemControl systemReinforcement Learning in RoboticsAdversarial Robustness in Machine LearningRobot Manipulation and Learning