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Semidual Regularized Optimal Transport

机译:新全程优化运输

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摘要

Variational problems that involve Wasserstein distances and more generally optimal transport (OT) theory are playing an increasingly important role in data sciences. Such problems can be used to form an exemplar measure out of various probability measures, as in the Wasserstein barycenter problem, or to carry out parametric inference and density fitting, where the loss is measured in terms of an optimal transport cost to the measure of observations. Despite being conceptually simple, such problems are computationally challenging because they involve minimizing over quantities (Wasserstein distances) that are themselves hard to compute. Entropic regularization has recently emerged as an efficient tool to approximate the solution of such variational Wasserstein problems. In this paper, we give a thorough duality tour of these regularization techniques. In particular, we show how important concepts from classical OT such as c-transforms and semidiscrete approaches translate into similar ideas in a regularized setting. These dual formulations lead to smooth variational problems, which can be solved using smooth, differentiable, and convex optimization problems that are simpler to implement and numerically more stable than their unregularized counterparts. We illustrate the versatility of this approach by applying it to the computation of Wasserstein barycenters and gradient flows of spatial regularization functionals.
机译:涉及Wassersein距离和更广泛的运输(OT)理论的变分问题在数据科学中发挥着越来越重要的作用。这些问题可以用于形成各种概率测量的示例性测量,如在Wasserstein重心问题中,或者执行参数推断和密度拟合,其中损耗是以最佳的运输成本对观察测量来测量的。尽管存在概念上简单,但这些问题是在计算上挑战的,因为它们涉及最小化数量(Wasserstein距离),它们本身难以计算。熵正则化最近作为一种高效的工具,以近似于解决此类变分瓦斯替换问题的解决方案。在本文中,我们提供了这些正则化技术的彻底二元之旅。特别是,我们展示了C-Transforms和SemItiscrete方法等经典OT的重要概念在正则化设置中转化为类似的想法。这些双制剂导致平滑的变分问题,可以使用平滑,可分辨率和凸优化问题来解决,这些问题更简单地实现和数值比其未说明的对应物更稳定。我们通过将其应用于计算Wassersein重构和空间正则化功能的梯度流动来说明这种方法的多功能性。

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