Divergence is Uncertainty: A Closed-Form Posterior Covariance for Flow Matching 文章

ArXiv CS.CV2026-06-02NEWSen作者: Jiarui Xing, Song Wang, Jian Wang

摘要

arXiv:2605.00941v4 Announce Type: replace-cross Abstract: Flow matching has become a leading framework for generative modeling, but quantifying the uncertainty of its samples remains an open problem. Existing approaches retrain the model with auxiliary variance heads, maintain costly ensembles, or propagate approximate covariance through many integration steps, trading off training cost, inference cost, or accuracy. We show that none of these trade-offs is necessary. By extending Tweedie's formula from the denoising setting to the flow matching interpolant, we derive an exact, closed-form expression for the posterior covariance at every point along the generative trajectory. The result depends on a single quantity, namely the divergence of the learned velocity field, which can be computed post-hoc on any pre-trained flow matching model, requiring no retraining and no architectural modification.

相关公司

暂无数据

相关人物

暂无数据

相关产品

暂无数据