Zeroth-order Riemannian Averaging Stochastic Approximation Algorithms
Jiaxiang Li, Krishnakumar Balasubramanian, Shiqian Ma
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We present Zeroth-order Riemannian Averaging Stochastic Approximation (Zo-RASA) algorithms for stochastic optimization on Riemannian manifolds. We show that Zo-RASA achieves optimal sample complexities for generating -approximation first-order stationary solutions using only one-sample or constant-order batches in each iteration. Our approach employs Riemannian moving-average stochastic gradient estimators, and a novel Riemannian-Lyapunov analysis technique for convergence analysis. We improve the algorithm's practicality by using retractions and vector transport, instead of exponential mappings and parallel transports, thereby reducing per-iteration complexity. Additionally, we introduce a novel geometric condition, satisfied by manifolds with bounded second fundamental form, which enables new error bounds for approximating parallel transport with vector transport.