In this paper, we propose a general procedure for establishing the geometric landscape connections of a Riemannian optimization problem under the embedded and quotient geometries. By applying the general procedure to the fixed-rank positive semidefinite (PSD) and general matrix optimization, we establish an exact Riemannian gradient connection under two geometries at every point on the manifold and sandwich inequalities between the spectra of Riemannian Hessians at Riemannian first-order stationary points (FOSPs). These results immediately imply an equivalence on the sets of Riemannian FOSPs, Riemannian second-order stationary points (SOSPs), and strict saddles of fixed-rank matrix optimization under the embedded and the quotient geometries. To the best of our knowledge, this is the first geometric landscape connection between the embedded and the quotient geometries for fixed-rank matrix optimization and it provides a concrete example of how these two geometries are connected in Riemannian optimization. In addition, the effects of the Riemannian metric and quotient structure on the landscape connection are discussed. We also observe an algorithmic connection between two geometries with some specific Riemannian metrics in fixed-rank matrix optimization: there is an equivalence between gradient flows under two geometries with shared spectra of Riemannian Hessians. A number of novel ideas and technical ingredients including a unified treatment for different Riemannian metrics, novel metrics for the Stiefel manifold, and new horizontal space representations under quotient geometries are developed to obtain our results. The results in this paper deepen our understanding of geometric and algorithmic connections of Riemannian optimization under different Riemannian geometries and provide a few new theoretical insights to unanswered questions in the literature.
翻译:在本文中,我们提出了一种建立 Riemannian 优化问题的嵌入和商流形下的几何景观联系的通用方法。通过将通用方法应用于固定秩半正定矩阵(PSD)和一般矩阵优化,我们在流形上的每个点上建立了两个几何下的 Riemannian 梯度联系,并在 Riemannian 一阶稳定点的 Riemannian Hessian 谱之间建立了夹逼不等式。这些结果立即意味着在嵌入和商流形下的固定秩矩阵优化的 Riemannian 一阶稳定点、Riemannian 二阶稳定点和严格鞍点之间的集合上的等价性。据我们所知,这是固定秩矩阵优化中嵌入和商流形之间的第一个几何景观联系,它提供了一个具体的例子,说明这两个几何在 Riemannian 优化中如何相互联系。此外,探讨了 Riemannian度量和商流形结构对景观连接的影响。我们还观察到,在具有特定 Riemannian 度量的情况下,固定秩矩阵优化中的两种几何存在算法联系:在 Riemannian Hessian 谱共享的情况下,两种几何下的梯度流存在等价性。我们开发了一些新的想法和技术要素,包括针对不同 Riemannian 度量的统一处理、Stiefel 流形的新度量以及商几何下的新水平空间表示等,以获得我们的结果。本文的结果深化了我们对 Riemannian 优化在不同 Riemannian 几何下的几何和算法联系的理解,并为文献中未解决的问题提供了一些新的理论见解。