AI RESEARCH

Adaptive graph-based algorithms for conditional anomaly detection and semi-supervised learning

arXiv CS.LG

ArXi:2605.03495v1 Announce Type: new We develop graph-based methods for semi-supervised learning based on label propagation on a data similarity graph. When data is abundant or arrive in a stream, the problems of computation and data storage arise for any graph-based method. We propose a fast approximate online algorithm that solves for the harmonic solution on an approximate graph. We show, both empirically and theoretically, that good behavior can be achieved by collapsing nearby points into a set of local representative points that minimize distortion.