This work concentrates on optimization on Riemannian manifolds. The Limited-memory Broyden-Fletcher-Goldfarb-Shanno (LBFGS) algorithm is a commonly used quasi-Newton method for numerical optimization in Euclidean spaces. Riemannian LBFGS (RLBFGS) is an extension of this method to Riemannian manifolds. RLBFGS involves computationally expensive vector transports as well as unfolding recursions using adjoint vector transports. In this article, we propose two mappings in the tangent space using the inverse second root and Cholesky decomposition. These mappings make both vector transport and adjoint vector transport identity and therefore isometric. Identity vector transport makes RLBFGS less computationally expensive and its isometry is also very useful in convergence analysis of RLBFGS. Moreover, under the proposed mappings, the Riemannian metric reduces to Euclidean inner product, which is much less computationally expensive. We focus on the Symmetric Positive Definite (SPD) manifolds which are beneficial in various fields such as data science and statistics. This work opens a research opportunity for extension of the proposed mappings to other well-known manifolds.
翻译:这项工作集中于优化里曼尼方体上的优化。 里曼尼LBFGS(RLBFGS)是这一方法延伸至里曼尼方体体的延伸。 里曼尼LBFGS(RLBFGS)涉及计算昂贵的矢量传输以及使用联合矢量传输进行循环。 在文章中, 我们提议使用倒数根和空心分解法在正对层空间进行两幅映射。 这些映射使矢量传输和连接矢量传输的特性成为常用的准牛顿方法,因此是测量性的。 身份矢量传输使里曼尼LBFGS(RLBFGS)的计算成本降低,而且其偏差也非常有助于对里曼尼方体进行汇合分析。 此外, 在拟议的绘图中, 里曼度测量会降低到Euclidean 内产, 这在计算成本上要低得多。 我们的重点是利用倒数正值阻力(Spres Detinite)(SPD)的图解算方法, 这为多个领域提供有益的数据, 以及其它领域的数据。