Wasserstein空间的统计数据分析

Jérémie Bigot
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引用次数: 17

摘要

本文关注的是数据集的统计推理问题,这些数据集的元素可能被建模为随机概率度量,如多个直方图或点云。我们建议回顾最近在统计中使用瓦瑟斯坦距离和最优运输工具来分析这些数据的贡献。特别地,我们强调了在Wasserstein空间中使用重心和测地线PCA概念的好处,目的是学习数据集中几何变化的主要模式。在此背景下,我们讨论了现有的工作,并提出了一些与统计最优运输这一新兴领域相关的研究观点。
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Statistical data analysis in the Wasserstein space
This paper is concerned by statistical inference problems from a data set whose elements may be modeled as random probability measures such as multiple histograms or point clouds. We propose to review recent contributions in statistics on the use of Wasserstein distances and tools from optimal transport to analyse such data. In particular, we highlight the benefits of using the notions of barycenter and geodesic PCA in the Wasserstein space for the purpose of learning the principal modes of geometric variation in a dataset. In this setting, we discuss existing works and we present some research perspectives related to the emerging field of statistical optimal transport.
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