The500Feed.Live

Everything going on in AI - updated daily from 500+ sources

← Back to The 500 Feed
📄 ResearchMay 14, 2026

Distance-Matrix Wasserstein Statistics for Scalable Gromov--Wasserstein Learning

Gromov--Wasserstein (GW) distances compare graphs, shapes, and point clouds through internal distances, without requiring a common coordinate system. This invariance is powerful, but discrete GW is a nonconvex quadratic optimal transport problem and is difficult to estimate at scale. We propose \emp...

Read Original Article →

Source

http://arxiv.org/abs/2605.14981v1