DS1 spectrogram: Convergence of Consensus-Based Particle Methods for Nonconvex Bi-Level Optimization

Convergence of Consensus-Based Particle Methods for Nonconvex Bi-Level Optimization

2605.19667

Authors

Jalal Etesami,Yutong Chao,Xudong Sun,Konstantin Riedl,Majid Khadiv

Abstract

In this paper, we study a consensus-based optimization method for nonconvex bi-level optimization, where the objective is to minimize an upper-level function over the set of global minimizers of a lower-level problem. The proposed approach is derivative-free, and constructs its consensus point via smooth quantile selection combined with a Gibbs-type Laplace approximation.

We establish convergence guarantees for both the associated mean-field dynamics and its finite-particle approximation. In particular, under suitable assumptions on smooth quantile localization, error bounds, and stability, we show that the mean-field law reaches any arbitrary prescribed Wasserstein neighborhood of the target bi-level solution with an explicit exponential rate up to the hitting time.

Numerical experiments on a two-dimensional constrained problem and neural network training further support the theoretical results.

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