Empirical analysis of PGA-MAP-Elites for Neuroevolution in Uncertain Domains
Manon Flageat, Felix Chalumeau, and Antoine Cully

TL;DR
This paper provides an in-depth empirical study of PGA-MAP-Elites, demonstrating its high performance and reproducibility in high-dimensional, uncertain domains, and analyzing the role of policy-gradient operators.
Contribution
It introduces a comprehensive analysis of PGA-MAP-Elites, highlighting its effectiveness in uncertain environments and the importance of policy-gradient operators during early search stages.
Findings
PGA-MAP-Elites outperforms baseline algorithms in deterministic and uncertain high-dimensional environments.
Solutions generated by PGA-MAP-Elites are highly reproducible in uncertain domains.
Policy-gradient variation is crucial in early search stages for high performance.
Abstract
Quality-Diversity algorithms, among which MAP-Elites, have emerged as powerful alternatives to performance-only optimisation approaches as they enable generating collections of diverse and high-performing solutions to an optimisation problem. However, they are often limited to low-dimensional search spaces and deterministic environments. The recently introduced Policy Gradient Assisted MAP-Elites (PGA-MAP-Elites) algorithm overcomes this limitation by pairing the traditional Genetic operator of MAP-Elites with a gradient-based operator inspired by Deep Reinforcement Learning. This new operator guides mutations toward high-performing solutions using policy-gradients. In this work, we propose an in-depth study of PGA-MAP-Elites. We demonstrate the benefits of policy-gradients on the performance of the algorithm and the reproducibility of the generated solutions when considering uncertain…
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Taxonomy
TopicsMetaheuristic Optimization Algorithms Research · Reinforcement Learning in Robotics · Machine Learning and ELM
