English

Preference-Conditioned Gradient Variations for Multi-Objective Quality-Diversity

Artificial Intelligence 2026-02-03 v2

Abstract

In a variety of domains, from robotics to finance, Quality-Diversity algorithms have been used to generate collections of both diverse and high-performing solutions. Multi-Objective Quality-Diversity algorithms have emerged as a promising approach for applying these methods to complex, multi-objective problems. However, existing methods are limited by their search capabilities. For example, Multi-Objective Map-Elites depends on random genetic variations which struggle in high-dimensional search spaces. Despite efforts to enhance search efficiency with gradient-based mutation operators, existing approaches consider updating solutions to improve on each objective separately rather than achieving desired trade-offs. In this work, we address this limitation by introducing Multi-Objective Map-Elites with Preference-Conditioned Policy-Gradient and Crowding Mechanisms: a new Multi-Objective Quality-Diversity algorithm that uses preference-conditioned policy-gradient mutations to efficiently discover promising regions of the objective space and crowding mechanisms to promote a uniform distribution of solutions on the non-dominated front. We evaluate our approach on six robotics locomotion tasks and show that our method outperforms or matches all state-of-the-art Multi-Objective Quality-Diversity methods in all six, including two newly proposed tri-objective tasks. Importantly, our method also achieves a smoother set of trade-offs, as measured by newly-proposed sparsity-based metrics.

Keywords

Cite

@article{arxiv.2411.12433,
  title  = {Preference-Conditioned Gradient Variations for Multi-Objective Quality-Diversity},
  author = {Hannah Janmohamed and Maxence Faldor and Thomas Pierrot and Antoine Cully},
  journal= {arXiv preprint arXiv:2411.12433},
  year   = {2026}
}
R2 v1 2026-06-28T20:04:53.536Z