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Adaptive optimal transport

机译:自适应最佳运输

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摘要

An adaptive, adversarial methodology is developed for the optimal transport problem between two distributions μ and ν, known only through a finite set of independent samples (x_i)_(i=1..n) and (y_j)_(j=1..m). The methodology automatically creates features that adapt to the data, thus avoiding reliance on a priori knowledge of the distributions underlying the data. Specifically, instead of a discrete point-by-point assignment, the new procedure seeks an optimal map T(x) defined for all x, minimizing the Kullback– Leibler divergence between (T(x_i)) and the target (y_j). The relative entropy is given a sample-based, variational characterization, thereby creating an adversarial setting: as one player seeks to push forward one distribution to the other, the second player develops features that focus on those areas where the two distributions fail to match. The procedure solves local problems that seek the optimal transfer between consecutive, intermediate distributions between μ and ν. As a result, maps of arbitrary complexity can be built by composing the simple maps used for each local problem. Displaced interpolation is used to guarantee global from local optimality. The procedure is illustrated through synthetic examples in one and two dimensions.
机译:为两个分布μ和ν之间的最佳传输问题开发了一种自适应,对抗方法,仅通过一组有限的独立样本(x_i)_(i = 1..n)和(y_j)和(y_j)_(j = 1)才知道。 .m)。该方法会自动创建适应数据的功能,从而避免依赖数据基础分布的先验知识。具体而言,新过程不是逐点分配,而是寻求针对所有X定义的最佳映射t(x),最小化(t(x_i))和目标(y_jj)之间的kullback – leibler差异。相对熵给出了基于样本的变分表征,从而创建了一个对抗性设置:当一个玩家试图将一个分布推向另一个分布时,第二个玩家开发了专注于两个分布无法匹配的领域。该过程解决了寻求在μ和ν之间连续的中间分布之间寻求最佳转移的局部问题。结果,可以通过组成用于每个本地问题的简单地图来构建任意复杂性的地图。流离失所的插值用于保证局部最优的全局。通过一个和二维的合成示例来说明该过程。

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