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Extended Hamiltonian Learning on Riemannian Manifolds: Theoretical Aspects

机译:黎曼流形上的扩展哈密顿学:理论方面

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摘要

This paper introduces a general theory of extended Hamiltonian (second-order) learning on Riemannian manifolds, as an instance of learning by constrained criterion optimization. The dynamical learning equations are derived within the general framework of extended-Hamiltonian stationary-action principle and are expressed in a coordinate-free fashion. A theoretical analysis is carried out in order to compare the features of the dynamical learning theory with the features exhibited by the gradient-based ones. In particular, gradient-based learning is shown to be an instance of dynamical learning, and the classical gradient-based learning modified by a “momentum” term is shown to resemble discrete-time dynamical learning. Moreover, the convergence features of gradient-based and dynamical learning are compared on a theoretical basis. This paper discusses cases of learning by dynamical systems on manifolds of interest in the scientific literature, namely, the Stiefel manifold, the special orthogonal group, the Grassmann manifold, the group of symmetric positive definite matrices, the generalized flag manifold, and the real symplectic group of matrices.
机译:本文介绍了关于黎曼流形的扩展哈密顿(二阶)学习的一般理论,作为通过约束条件优化进行学习的实例。动态学习方程式是在扩展的哈密顿定律原理的一般框架内得出的,并以无坐标的方式表示。为了将动态学习理论的特征与基于梯度的理论所展现的特征进行比较,进行了理论分析。特别地,基于梯度的学习被显示为动态学习的一个实例,并且被“动量”项修饰的经典基于梯度的学习被显示为类似于离散时间动态学习。此外,在理论上比较了基于梯度学习和动态学习的收敛特征。本文讨论了动力学系统在科学文献中感兴趣的流形上的学习情况,这些流形是Stiefel流形,特殊正交群,Grassmann流形,对称正定矩阵组,广义标志流形和实辛矩阵组。

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