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arxiv: 1906.03056 · v1 · pith:XDDSFK5Vnew · submitted 2019-06-07 · 🧮 math.OC

Polyak Steps for Adaptive Fast Gradient Method

classification 🧮 math.OC
keywords acceleratedadaptiveboundconvexityfastgradientmethodparameter
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Accelerated algorithms for minimizing smooth strongly convex functions usually require knowledge of the strong convexity parameter $\mu$. In the case of an unknown $\mu$, current adaptive techniques are based on restart schemes. When the optimal value $f^*$ is known, these strategies recover the accelerated linear convergence bound without additional grid search. In this paper we propose a new approach that has the same bound without any restart, using an online estimation of strong convexity parameter. We show the robustness of the Fast Gradient Method when using a sequence of upper bounds on $\mu$. We also present a good candidate for this estimate sequence and detail consistent empirical results.

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