OCNANAOct 9, 2023

Polarized consensus-based dynamics for optimization and sampling

arXiv:2211.0523830 citationsh-index: 9
AI Analysis

This work addresses the limitation of consensus-based methods in handling multi-modal objectives, offering a theoretical foundation and improved clustering approach for high-dimensional optimization.

The paper introduces polarized consensus-based dynamics to enable consensus-based optimization and sampling for objective functions with multiple global minima or distributions with many modes, proving unbiasedness for Gaussian targets and convergence to a Dirac measure at the minimizer for strongly convex objectives.

In this paper we propose polarized consensus-based dynamics in order to make consensus-based optimization (CBO) and sampling (CBS) applicable for objective functions with several global minima or distributions with many modes, respectively. For this, we ``polarize'' the dynamics with a localizing kernel and the resulting model can be viewed as a bounded confidence model for opinion formation in the presence of common objective. Instead of being attracted to a common weighted mean as in the original consensus-based methods, which prevents the detection of more than one minimum or mode, in our method every particle is attracted to a weighted mean which gives more weight to nearby particles. We prove that in the mean-field regime the polarized CBS dynamics are unbiased for Gaussian targets. We also prove that in the zero temperature limit and for sufficiently well-behaved strongly convex objectives the solution of the Fokker--Planck equation converges in the Wasserstein-2 distance to a Dirac measure at the minimizer. Finally, we propose a computationally more efficient generalization which works with a predefined number of clusters and improves upon our polarized baseline method for high-dimensional optimization.

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