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Conditional Flow Matching for Bayesian Posterior Inference

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We propose a generative multivariate posterior sampler via flow matching. It offers a simple training objective, and does not require access to likelihood evaluation. The method learns a dynamic, block-triangular velocity field in the joint space of data and parameters, which results in a deterministic transport map from a source distribution to the desired posterior. The inverse map, named vector rank, is accessible by reversibly integrating the velocity over time. It is advantageous to leverage the dynamic design: proper constraints on the velocity yield a monotone map, which leads to a conditional Brenier map, enabling a fast and simultaneous generation of Bayesian credible sets whose contours correspond to level sets of Monge-Kantorovich data depth. Our approach is computationally lighter compared to GAN-based and diffusion-based counterparts, and is capable of capturing complex posterior structures. Finally, frequentist theoretical guarantee on the consistency of the recovered posterior distribution, and of the corresponding Bayesian credible sets, is provided.

Percy S. Zhai, So Won Jeong, Veronika Ro\v{c}kov\'a• 2025

Related benchmarks

TaskDatasetResultRank
Simulation-Based InferenceSBIBM Gaussian Linear
C2ST0.71
19
Simulation-Based InferenceGaussian Linear
Computation Time (s)0.01
8
Simulation-Based InferenceGaussian Mixture
Computation Time (s)0.01
8
Simulation-Based InferenceBernoulli GLM
Computation Time (s)0.01
8
Simulation-Based InferenceTwo Moons
Computation Time (s)0.01
8
Simulation-Based InferenceSLCP
Inference Time (s)0.01
8
Posterior SamplingBernoulli GLM SBI
C2ST92
7
Posterior SamplingGaussian Mixture SBI benchmark
C2ST82
7
Posterior SamplingSLCP SBI benchmark
C2ST93
7
Posterior SamplingTwo Moons SBI benchmark
C2ST74
6
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