Abstract
The limited memory steepest descent method (LMSD, Fletcher, 2012) for unconstrained optimization problems stores a few past gradients to compute multiple stepsizes at once. We review this method and propose new variants. For strictly convex quadratic objective functions, we study the numerical behavior of different techniques to compute new stepsizes. In particular, we introduce a method to improve the use of harmonic Ritz values. We also show the existence of a secant condition associated with LMSD, where the approximating Hessian is projected onto a low-dimensional space. In the general nonlinear case, we propose two new alternatives to Fletcher’s method: first, the addition of symmetry constraints to the secant condition valid for the quadratic case; second, a perturbation of the last differences between consecutive gradients, to satisfy multiple secant equations simultaneously. We show that Fletcher’s method can also be interpreted from this viewpoint.
Original language | English |
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Pages (from-to) | 735-764 |
Number of pages | 30 |
Journal | Numerical Algorithms |
Volume | 99 |
Issue number | 2 |
Early online date | 26 Jul 2024 |
DOIs | |
Publication status | Published - Jun 2025 |
Keywords
- 65F10
- 65F15
- 65K05
- 90C20
- 90C30
- Limited memory steepest descent
- Low-dimensional Hessian approximation
- Lyapunov equation
- Rayleigh–Ritz extraction
- Secant condition
- Unconstrained optimization