AI RESEARCH

Subspace Projection Methods for Fast Spectral Embeddings of Evolving Graphs

arXiv CS.LG

ArXi:2603.19439v1 Announce Type: cross Several graph data mining, signal processing, and machine learning downstream tasks rely on information related to the eigenvectors of the associated adjacency or Laplacian matrix. Classical eigendecomposition methods are powerful when the matrix remains static but cannot be applied to problems where the matrix entries are updated or the number of rows and columns increases frequently. Such scenarios occur routinely in graph analytics when the graph is changing dynamically and either edges and/or nodes are being added and removed.