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Mirror Mean-Field Langevin Dynamics

5 May 2025
Anming Gu
Juno Kim
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Abstract

The mean-field Langevin dynamics (MFLD) minimizes an entropy-regularized nonlinear convex functional on the Wasserstein space over Rd\mathbb{R}^dRd, and has gained attention recently as a model for the gradient descent dynamics of interacting particle systems such as infinite-width two-layer neural networks. However, many problems of interest have constrained domains, which are not solved by existing mean-field algorithms due to the global diffusion term. We study the optimization of probability measures constrained to a convex subset of Rd\mathbb{R}^dRd by proposing the \emph{mirror mean-field Langevin dynamics} (MMFLD), an extension of MFLD to the mirror Langevin framework. We obtain linear convergence guarantees for the continuous MMFLD via a uniform log-Sobolev inequality, and uniform-in-time propagation of chaos results for its time- and particle-discretized counterpart.

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@article{gu2025_2505.02621,
  title={ Mirror Mean-Field Langevin Dynamics },
  author={ Anming Gu and Juno Kim },
  journal={arXiv preprint arXiv:2505.02621},
  year={ 2025 }
}
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