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Comparison of an Apocalypse-Free and an Apocalypse-Prone First-Order Low-Rank Optimization Algorithm

Authors :
Olikier, Guillaume
Gallivan, Kyle A.
Absil, P. -A.
Olikier, Guillaume
Gallivan, Kyle A.
Absil, P. -A.
Publication Year :
2022

Abstract

We compare two first-order low-rank optimization algorithms, namely $\text{P}^2\text{GD}$ (Schneider and Uschmajew, 2015), which has been proven to be apocalypse-prone (Levin et al., 2021), and its apocalypse-free version $\text{P}^2\text{GDR}$ obtained by equipping $\text{P}^2\text{GD}$ with a suitable rank reduction mechanism (Olikier et al., 2022). Here an apocalypse refers to the situation where the stationarity measure goes to zero along a convergent sequence whereas it is nonzero at the limit. The comparison is conducted on two simple examples of apocalypses, the original one (Levin et al., 2021) and a new one. We also present a potential side effect of the rank reduction mechanism of $\text{P}^2\text{GDR}$ and discuss the choice of the rank reduction parameter.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1333750823
Document Type :
Electronic Resource