The performance of Krylov subspace eigenvalue algorithms for large matrices can be measured by the angle between a desired invariant subspace and the Krylov subspace. We develop general bounds for this convergence that include the effects of polynomial restarting and impose no restrictions concerning the diagonalizability of the matrix or its degree of nonnormality. Associated with a desired set of eigenvalues is a maximum "reachable invariant subspace" that can be developed from the given starting vector. Convergence for this distinguished subspace is bounded in terms involving a polynomial approximation problem. Elementary results from potential theory lead to convergence rate estimates and suggest restarting strategies based on optimal approximation points (e.g., Leja or Chebyshev points); exact shifts are evaluated within this framework. Computational examples illustrate the utility of these results. Origins of superlinear effects are also described.
机构:
Indian Stat Inst, Stat & Math Unit, 8th Mile,Mysore Rd, Bangalore 560059, IndiaIndian Stat Inst, Stat & Math Unit, 8th Mile,Mysore Rd, Bangalore 560059, India
Das, S.
Sarkar, J.
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机构:
Indian Stat Inst, Stat & Math Unit, 8th Mile,Mysore Rd, Bangalore 560059, IndiaIndian Stat Inst, Stat & Math Unit, 8th Mile,Mysore Rd, Bangalore 560059, India