Abstract
We study the convergence rate of the famous Symmetric Rank-1 (SR1) algorithm, which has wide applications in different scenarios. Although it has been extensively investigated, SR1 still lacks a non-asymptotic superlinear rate compared with other quasi-Newton methods such as DFP and BFGS. In this paper, we address the aforementioned issue to obtain the first explicit non-asymptotic rates of superlinear convergence for the vanilla SR1 methods with a correction strategy that is used to achieve numerical stability. Specifically, the vanilla SR1 with the correction strategy achieves the rate of the form (2nln(4ϰ)k)k/2 for general smooth strongly-convex functions where k is the iteration counter, ϰ is the condition number of the objective function, and n is the dimensionality of the problem. Furthermore, the vanilla SR1 algorithm enjoys a little faster convergence rate and can find the optima of the quadratic objective function at most n steps.
| Original language | English |
|---|---|
| Pages (from-to) | 1273-1303 |
| Number of pages | 31 |
| Journal | Mathematical Programming |
| Volume | 199 |
| Issue number | 1-2 |
| DOIs | |
| State | Published - May 2023 |
Keywords
- Explicit superlinear convergence rate
- Quasi-Newton
- Symmetric rank-one
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