Entrywise Convergence of Iterative Methods for Eigenproblems
–Neural Information Processing Systems
Several problems in machine learning, statistics, and other fields rely on computing eigenvectors. For large scale problems, the computation of these eigenvectors is typically performed via iterative schemes such as subspace iteration or Krylov methods. While there is classical and comprehensive analysis for subspace convergence guarantees with respect to the spectral norm, in many modern applications other notions of subspace distance are more appropriate.
Neural Information Processing Systems
May-29-2025, 02:03:51 GMT