Algorithms recover Wasserstein distance matrices from few entries via matrix completion and Nyström sampling, with MDS stability proof and stable OrganCMNIST classification at 10% column budget.
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Recovering Wasserstein Distance Matrices from Few Measurements
Algorithms recover Wasserstein distance matrices from few entries via matrix completion and Nyström sampling, with MDS stability proof and stable OrganCMNIST classification at 10% column budget.