Goto

Collaborating Authors

 restart rule


We thank all the reviewers for insightful comments and suggestions

Neural Information Processing Systems

We thank all the reviewers for insightful comments and suggestions. We address the two remarks below. This enables the adaptive minimaxity for Sobolev and Holder classes. Our results do not directly apply to that stronger setting. Thanks for the detailed and insightful review.


Covariance Matrix Adaptation MAP-Annealing

Fontaine, Matthew C., Nikolaidis, Stefanos

arXiv.org Artificial Intelligence

Single-objective optimization algorithms search for the single highest-quality solution with respect to an objective. Quality diversity (QD) optimization algorithms, such as Covariance Matrix Adaptation MAP-Elites (CMA-ME), search for a collection of solutions that are both high-quality with respect to an objective and diverse with respect to specified measure functions. However, CMA-ME suffers from three major limitations highlighted by the QD community: prematurely abandoning the objective in favor of exploration, struggling to explore flat objectives, and having poor performance for low-resolution archives. We propose a new quality diversity algorithm, Covariance Matrix Adaptation MAP-Annealing (CMA-MAE), that addresses all three limitations. We provide theoretical justifications for the new algorithm with respect to each limitation. Our theory informs our experiments, which support the theory and show that CMA-MAE achieves state-of-the-art performance and robustness.