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To discretize continually: Mean shift interacting particle systems for Bayesian inference

About

Integration against a probability distribution given its unnormalized density is a central task in Bayesian inference and other fields. We introduce new methods for approximating such expectations with a small set of weighted samples -- i.e., a quadrature rule -- constructed via an interacting particle system that minimizes maximum mean discrepancy (MMD) to the target distribution. These methods extend the classical mean shift algorithm, as well as recent algorithms for optimal quantization of empirical distributions, to the case of continuous distributions. Crucially, our approach creates dynamics for MMD minimization that are invariant to the unknown normalizing constant; they also admit both gradient-free and gradient-informed implementations. The resulting mean shift interacting particle systems converge quickly, capture anisotropy and multi-modality, avoid mode collapse, and scale to high dimensions. We demonstrate their performance on a wide range of benchmark sampling problems, including multi-modal mixtures, Bayesian hierarchical models, PDE-constrained inverse problems, and beyond.

Ayoub Belhadji, Daniel Sharp, Youssef M. Marzouk• 2026

Related benchmarks

TaskDatasetResultRank
Synthetic Distribution SamplingGMM5
KSD1.375
7
Synthetic Distribution SamplingGMM10
KSD1.97
7
Synthetic Distribution SamplingGMM20
KSD3.012
7
Synthetic Distribution SamplingJoker
KSD8.493
7
Synthetic Distribution SamplingFunnel2
KSD8.618
7
Synthetic Distribution SamplingFunnel5
KSD14.25
7
Synthetic Distribution SamplingFunnel10
KSD20.24
7
Synthetic Distribution SamplingGMM2
KSD1
7
Synthetic Distribution SamplingFunnel20
KSD28.92
7
Synthetic Distribution SamplingFunnel50
KSD46.68
6
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