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arxiv: 1905.12436 · v1 · pith:U35IK2IVnew · submitted 2019-05-28 · 🧮 math.OC

Acceleration in First Order Quasi-strongly Convex Optimization by ODE Discretization

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keywords convexaccelerationdiscretizationfunctionneighborhoodnumericaloptimizationorder
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We study gradient-based optimization methods obtained by direct Runge-Kutta discretization of the ordinary differential equation (ODE) describing the movement of a heavy-ball under constant friction coefficient. When the function is high order smooth and strongly convex, we show that directly simulating the ODE with known numerical integrators achieve acceleration in a nontrivial neighborhood of the optimal solution. In particular, the neighborhood can grow larger as the condition number of the function increases. Furthermore, our results also hold for nonconvex but quasi-strongly convex objectives. We provide numerical experiments that verify the theoretical rates predicted by our results.

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