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arxiv: 1412.7457 · v1 · pith:TEPPOOOAnew · submitted 2014-12-23 · 🧮 math.OC

Global convergence of the Heavy-ball method for convex optimization

classification 🧮 math.OC
keywords convergenceconvexglobalheavy-ballfunctioniteratesmethodobjective
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This paper establishes global convergence and provides global bounds of the convergence rate of the Heavy-ball method for convex optimization problems. When the objective function has Lipschitz-continuous gradient, we show that the Cesaro average of the iterates converges to the optimum at a rate of $O(1/k)$ where k is the number of iterations. When the objective function is also strongly convex, we prove that the Heavy-ball iterates converge linearly to the unique optimum.

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