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Analysis of Krylov Subspace Solutions of Regularized Nonconvex Quadratic Problems

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We provide convergence rates for Krylov subspace solutions to the trust-region and cubic-regularized (nonconvex) quadratic problems. Such solutions may be efficiently computed by the Lanczos method and have long been used in practice. We prove error bounds of the form $1/t^2$ and $e^{-4t/\sqrt{\kappa}}$, where $\kappa$ is a condition number for the problem, and $t$ is the Krylov subspace order (number of Lanczos iterations). We also provide lower bounds showing that our analysis is sharp.

Yair Carmon, John C. Duchi• 2018

Related benchmarks

TaskDatasetResultRank
Unconstrained OptimizationCUTEst TQUARTIC (n=5000)
Objective Value5.05e-14
6
Unconstrained OptimizationCUTEst TOINTGSS n=1000
Objective Value3.60e+14
6
Unconstrained OptimizationCUTEst BRYBAND n=2000
Final Objective Value7.49e+14
6
Unconstrained OptimizationCUTEst DIXMAANG n=3000
Objective Value1
6
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