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Autori principali: Sumba, Xavier, Balsells-Rodas, Carles, Li, Yingzhen
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2605.07676
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author Sumba, Xavier
Balsells-Rodas, Carles
Li, Yingzhen
author_facet Sumba, Xavier
Balsells-Rodas, Carles
Li, Yingzhen
contents Standard flow matching scales well but typically relies on an unstructured source distribution, limiting its ability to learn interpretable latent structure. Latent-variable models, by contrast, capture structure but often sacrifice generative quality. We bridge this gap by proposing Structured Coupling for Flow Matching (SCFM), a cooperative framework that augments flow matching with structured latent representation learning. By introducing structured latent variables and exogenous noise into the source, SCFM jointly learns a structured prior (via latent variable modeling) and a continuous transport map (via flow matching). It uses a shared time-dependent recognition network for both latent variable model variational inference and intermediate-time flow velocity estimation. This yields a structurally informed yet unconditional, simulation-free flow model, where the latent variable model can also assist flow sampling. Empirically, SCFM facilitates unsupervised latent representation learning for clustering, disentanglement and downstream tasks, while remaining competitive with flow matching in sample quality, showing that meaningful structure can be learned without sacrificing generative fidelity.
format Preprint
id arxiv_https___arxiv_org_abs_2605_07676
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Structured Coupling for Flow Matching
Sumba, Xavier
Balsells-Rodas, Carles
Li, Yingzhen
Machine Learning
Standard flow matching scales well but typically relies on an unstructured source distribution, limiting its ability to learn interpretable latent structure. Latent-variable models, by contrast, capture structure but often sacrifice generative quality. We bridge this gap by proposing Structured Coupling for Flow Matching (SCFM), a cooperative framework that augments flow matching with structured latent representation learning. By introducing structured latent variables and exogenous noise into the source, SCFM jointly learns a structured prior (via latent variable modeling) and a continuous transport map (via flow matching). It uses a shared time-dependent recognition network for both latent variable model variational inference and intermediate-time flow velocity estimation. This yields a structurally informed yet unconditional, simulation-free flow model, where the latent variable model can also assist flow sampling. Empirically, SCFM facilitates unsupervised latent representation learning for clustering, disentanglement and downstream tasks, while remaining competitive with flow matching in sample quality, showing that meaningful structure can be learned without sacrificing generative fidelity.
title Structured Coupling for Flow Matching
topic Machine Learning
url https://arxiv.org/abs/2605.07676