LGCVOCMLFeb 26, 2018

VR-SGD: A Simple Stochastic Variance Reduction Method for Machine Learning

arXiv:1802.09932v273 citations
AI Analysis

This work addresses convergence bottlenecks in optimization for machine learning practitioners, offering an incremental improvement with broader applicability to non-smooth problems.

The paper tackles the problem of slow convergence in stochastic variance reduction methods by proposing VR-SGD, a variant of SVRG that uses average and last iterate settings to allow larger learning rates and handle non-smooth or non-strongly convex problems directly, achieving linear convergence for strongly convex cases and faster convergence than SVRG, Prox-SVRG, and often Katyusha in experiments.

In this paper, we propose a simple variant of the original SVRG, called variance reduced stochastic gradient descent (VR-SGD). Unlike the choices of snapshot and starting points in SVRG and its proximal variant, Prox-SVRG, the two vectors of VR-SGD are set to the average and last iterate of the previous epoch, respectively. The settings allow us to use much larger learning rates, and also make our convergence analysis more challenging. We also design two different update rules for smooth and non-smooth objective functions, respectively, which means that VR-SGD can tackle non-smooth and/or non-strongly convex problems directly without any reduction techniques. Moreover, we analyze the convergence properties of VR-SGD for strongly convex problems, which show that VR-SGD attains linear convergence. Different from its counterparts that have no convergence guarantees for non-strongly convex problems, we also provide the convergence guarantees of VR-SGD for this case, and empirically verify that VR-SGD with varying learning rates achieves similar performance to its momentum accelerated variant that has the optimal convergence rate $\mathcal{O}(1/T^2)$. Finally, we apply VR-SGD to solve various machine learning problems, such as convex and non-convex empirical risk minimization, and leading eigenvalue computation. Experimental results show that VR-SGD converges significantly faster than SVRG and Prox-SVRG, and usually outperforms state-of-the-art accelerated methods, e.g., Katyusha.

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