Gradient-Informed Quality Diversity for the Illumination of Discrete
Spaces
- URL: http://arxiv.org/abs/2306.05138v2
- Date: Wed, 13 Sep 2023 08:28:46 GMT
- Title: Gradient-Informed Quality Diversity for the Illumination of Discrete
Spaces
- Authors: Raphael Boige, Guillaume Richard, J\'er\'emie Dona, Thomas Pierrot,
Antoine Cully
- Abstract summary: Quality Diversity (QD) algorithms have been proposed to search for a large collection of both diverse and high-performing solutions instead of a single set of local optima.
We introduce a Gradient-Informed Discrete Emitter (ME-GIDE), which extends QD with differentiable functions over discrete search spaces.
We evaluate our method on challenging benchmarks including protein design and discrete latent space illumination and find that our method outperforms state-of-the-art QD algorithms in all benchmarks.
- Score: 7.799824794686343
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Quality Diversity (QD) algorithms have been proposed to search for a large
collection of both diverse and high-performing solutions instead of a single
set of local optima. While early QD algorithms view the objective and
descriptor functions as black-box functions, novel tools have been introduced
to use gradient information to accelerate the search and improve overall
performance of those algorithms over continuous input spaces. However a broad
range of applications involve discrete spaces, such as drug discovery or image
generation. Exploring those spaces is challenging as they are combinatorially
large and gradients cannot be used in the same manner as in continuous spaces.
We introduce map-elites with a Gradient-Informed Discrete Emitter (ME-GIDE),
which extends QD optimisation with differentiable functions over discrete
search spaces. ME-GIDE leverages the gradient information of the objective and
descriptor functions with respect to its discrete inputs to propose
gradient-informed updates that guide the search towards a diverse set of high
quality solutions. We evaluate our method on challenging benchmarks including
protein design and discrete latent space illumination and find that our method
outperforms state-of-the-art QD algorithms in all benchmarks.
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