In recent years, various subspace algorithms have been developed to handle large-scale optimization problems. Although existing subspace Newton methods require fewer iterations to converge in practice, the matrix operations and full gradient computation are bottlenecks when dealing with large-scale problems. We propose a subspace quasi-Newton method that is restricted to a deterministic subspace together with a subspace gradient based on random matrix theory. Our method does not require full gradients, let alone Hessian matrices. Yet, it achieves the same order of worst-case iteration complexity in expectation for both convex and nonconvex cases as existing subspace methods. In numerical experiments, we confirm the superiority of our algorithm in terms of computation time.
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Taisei Miyaishi
The University of Tokyo
Ryota Nozawa
The University of Tokyo
Pierre‐Louis Poirion
RIKEN Center for Advanced Intelligence Project
Journal of Global Optimization
The University of Tokyo
RIKEN Center for Advanced Intelligence Project
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Miyaishi et al. (Mon,) studied this question.
synapsesocial.com/papers/69df2a99e4eeef8a2a6af992 — DOI: https://doi.org/10.1007/s10898-026-01597-7