Abstract
Among first order optimization methods, Polyak’s heavy ball method has long been known to guarantee the asymptotic rate of convergence matching Nesterov’s lower bound for functions defined in an infinite-dimensional space. In this paper, we use results on the robust gain margin of linear uncertain feedback control systems to show that the heavy ball method is provably worst-case asymptotically optimal when applied to quadratic functions in a finite dimensional space.
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