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Wasserstein Flow Matching: Generative modeling over families of distributions

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Generative modeling typically concerns transporting a single source distribution to a target distribution via simple probability flows. However, in fields like computer graphics and single-cell genomics, samples themselves can be viewed as distributions, where standard flow matching ignores their inherent geometry. We propose Wasserstein flow matching (WFM), which lifts flow matching onto families of distributions using the Wasserstein geometry. Notably, WFM is the first algorithm capable of generating distributions in high dimensions, whether represented analytically (as Gaussians) or empirically (as point-clouds). Our theoretical analysis establishes that Wasserstein geodesics constitute proper conditional flows over the space of distributions, making for a valid FM objective. Our algorithm leverages optimal transport theory and the attention mechanism, demonstrating versatility across computational regimes: exploiting closed-form optimal transport paths for Gaussian families, while using entropic estimates on point-clouds for general distributions. WFM successfully generates both 2D & 3D shapes and high-dimensional cellular microenvironments from spatial transcriptomics data. Code is available at https://github.com/DoronHav/WassersteinFlowMatching .

Doron Haviv, Aram-Alexandre Pooladian, Dana Pe'er, Brandon Amos• 2024

Related benchmarks

TaskDatasetResultRank
Measure-to-measure regressionMulti-measure objects Diffusion corruption (unseen measures)
W1 Score0.5834
9
Measure-to-measure regressionMulti-measure objects Kernel interactions corruption (unseen measures)
W10.5226
9
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