Stochastic optimization over expectation-formulated generalized Stiefel manifold
Abstract
In this paper, we consider a class of stochastic optimization problems over the expectation-formulated generalized Stiefel manifold (SOEGS), where the objective function is continuously differentiable. We propose a novel constraint dissolving penalty function with a customized penalty term (CDFDP), which maintains the same order of differentiability as . Our theoretical analysis establishes the global equivalence between CDFCP and SOEGS in the sense that they share the same first-order and second-order stationary points under mild conditions. These results on equivalence enable the direct implementation of various stochastic optimization approaches to solve SOEGS. In particular, we develop a stochastic gradient algorithm and its accelerated variant by incorporating an adaptive step size strategy. Furthermore, we prove their sample complexity for finding an -stationary point of CDFCP. Comprehensive numerical experiments show the efficiency and robustness of our proposed algorithms.
Cite
@article{arxiv.2412.20008,
title = {Stochastic optimization over expectation-formulated generalized Stiefel manifold},
author = {Linshuo Jiang and Nachuan Xiao and Xin Liu},
journal= {arXiv preprint arXiv:2412.20008},
year = {2024}
}
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34 pages