AI RESEARCH

Improved large-scale graph learning through ridge spectral sparsification

arXiv CS.LG

ArXi:2604.20078v1 Announce Type: new Graph-based techniques and spectral graph theory have enriched the field of machine learning with a variety of critical advances. A central object in the analysis is the graph Laplacian L, which encodes the structure of the graph. We consider the problem of learning over this Laplacian in a distributed streaming setting, where new edges of the graph are observed in real time by a network of workers. In this setting, it is hard to learn quickly or approximately while keeping a distributed representation of L.