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Principal Curves In Metric Spaces And The Space Of Probability Measures

Principal Curves In Metric Spaces And The Space Of Probability Measures

来源:Arxiv_logoArxiv
英文摘要

We introduce principal curves in Wasserstein space, and in general compact metric spaces. Our motivation for the Wasserstein case comes from optimal-transport-based trajectory inference, where a developing population of cells traces out a curve in Wasserstein space. Our framework enables new experimental procedures for collecting high-density time-courses of developing populations of cells: time-points can be processed in parallel (making it easier to collect more time-points). However, then the time of collection is unknown, and must be recovered by solving a seriation problem (or one-dimensional manifold learning problem). We propose an estimator based on Wasserstein principal curves, and prove it is consistent for recovering a curve of probability measures in Wasserstein space from empirical samples. This consistency theorem is obtained via a series of results regarding principal curves in compact metric spaces. In particular, we establish the validity of certain numerical discretization schemes for principal curves, which is a new result even in the Euclidean setting.

Andrew Warren、Anton Afanassiev、Forest Kobayashi、Young-Heon Kim、Geoffrey Schiebinger

数学细胞生物学

Andrew Warren,Anton Afanassiev,Forest Kobayashi,Young-Heon Kim,Geoffrey Schiebinger.Principal Curves In Metric Spaces And The Space Of Probability Measures[EB/OL].(2025-05-07)[2025-07-03].https://arxiv.org/abs/2505.04168.点此复制

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