Stochastic Gradient Descent on Riemannian Manifolds 论文

2013IEEE Transactions on Automatic Control引用 324
Stochastic Gradient Optimization TechniquesMarkov Chains and Monte Carlo MethodsAdvanced Optimization Algorithms Research

摘要

Stochastic gradient descent is a simple approach to find the local minima of a cost function whose evaluations are corrupted by noise. In this paper, we develop a procedure extending stochastic gradient descent algorithms to the case where the function is defined on a Riemannian manifold. We prove that, as in the Euclidian case, the gradient descent algorithm converges to a critical point of the cost function. The algorithm has numerous potential applications, and is illustrated here by four examples. In particular a novel gossip algorithm on the set of covariance matrices is derived and tested numerically.