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Fast Algorithms for a New Relaxation of Optimal Transport

Published 14 Jul 2023 in cs.DS | (2307.10042v1)

Abstract: We introduce a new class of objectives for optimal transport computations of datasets in high-dimensional Euclidean spaces. The new objectives are parametrized by $\rho \geq 1$, and provide a metric space $\mathcal{R}{\rho}(\cdot, \cdot)$ for discrete probability distributions in $\mathbb{R}d$. As $\rho$ approaches $1$, the metric approaches the Earth Mover's distance, but for $\rho$ larger than (but close to) $1$, admits significantly faster algorithms. Namely, for distributions $\mu$ and $\nu$ supported on $n$ and $m$ vectors in $\mathbb{R}d$ of norm at most $r$ and any $\epsilon > 0$, we give an algorithm which outputs an additive $\epsilon r$-approximation to $\mathcal{R}{\rho}(\mu, \nu)$ in time $(n+m) \cdot \mathrm{poly}((nm){(\rho-1)/\rho} \cdot 2{\rho / (\rho-1)} / \epsilon)$.

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