AI RESEARCH
Optimizing Computational-Statistical Runtime for Wasserstein Distance Estimation
arXiv CS.LG
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ArXi:2605.20122v1 Announce Type: cross Squared Wasserstein distance is a frequently used tool to measure discrepancy between probability distributions. This distance is typically computed between empirical measures of size $n$ from two underlying random samples. Unfortunately, even in lower dimensional Euclidean space problems $\left( d \in \{2,3\} \right)$, algorithms for Wasserstein distance computation with approximate or exact precision guarantees scale poorly in the runtime as a function of $n$ and the desired precision.