Convergence and worst-case complexity of adaptive Riemannian trust-region methods for optimization on manifolds

IF 1.8 3区 数学 Q1 Mathematics Journal of Global Optimization Pub Date : 2024-03-18 DOI:10.1007/s10898-024-01378-0
Zhou Sheng, Gonglin Yuan
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Abstract

Trust-region methods have received massive attention in a variety of continuous optimization. They aim to obtain a trial step by minimizing a quadratic model in a region of a certain trust-region radius around the current iterate. This paper proposes an adaptive Riemannian trust-region algorithm for optimization on manifolds, in which the trust-region radius depends linearly on the norm of the Riemannian gradient at each iteration. Under mild assumptions, we establish the liminf-type convergence, lim-type convergence, and global convergence results of the proposed algorithm. In addition, the proposed algorithm is shown to reach the conclusion that the norm of the Riemannian gradient is smaller than \(\epsilon \) within \({\mathcal {O}}(\frac{1}{\epsilon ^2})\) iterations. Some numerical examples of tensor approximations are carried out to reveal the performances of the proposed algorithm compared to the classical Riemannian trust-region algorithm.

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用于流形优化的自适应黎曼信任区域方法的收敛性和最坏情况复杂性
信任区域方法在各种连续优化中受到广泛关注。其目的是通过在当前迭代周围一定信任区域半径的区域内最小化二次模型来获得试步。本文提出了一种用于流形优化的自适应黎曼信任区域算法,其中信任区域半径线性取决于每次迭代时的黎曼梯度准则。在温和的假设条件下,我们建立了所提算法的极限型收敛、临界型收敛和全局收敛结果。此外,我们还证明了所提算法可以在({mathcal {O}}(\frac{1}{\epsilon ^2})\)次迭代内得出黎曼梯度的规范小于\(\epsilon \)的结论。通过一些张量近似的数值例子,揭示了所提算法与经典黎曼信任区域算法相比的性能。
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来源期刊
Journal of Global Optimization
Journal of Global Optimization 数学-应用数学
CiteScore
0.10
自引率
5.60%
发文量
137
审稿时长
6 months
期刊介绍: The Journal of Global Optimization publishes carefully refereed papers that encompass theoretical, computational, and applied aspects of global optimization. While the focus is on original research contributions dealing with the search for global optima of non-convex, multi-extremal problems, the journal’s scope covers optimization in the widest sense, including nonlinear, mixed integer, combinatorial, stochastic, robust, multi-objective optimization, computational geometry, and equilibrium problems. Relevant works on data-driven methods and optimization-based data mining are of special interest. In addition to papers covering theory and algorithms of global optimization, the journal publishes significant papers on numerical experiments, new testbeds, and applications in engineering, management, and the sciences. Applications of particular interest include healthcare, computational biochemistry, energy systems, telecommunications, and finance. Apart from full-length articles, the journal features short communications on both open and solved global optimization problems. It also offers reviews of relevant books and publishes special issues.
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