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Solving Non-smooth Constrained Programs with Lower Complexity than O(1/ε)\mathcal{O}(1/\varepsilon): A Primal-Dual Homotopy Smoothing Approach

Abstract

We propose a new primal-dual homotopy smoothing algorithm for a linearly constrained convex program, where neither the primal nor the dual function has to be smooth or strongly convex. The best known iteration complexity solving such a non-smooth problem is O(ε1)\mathcal{O}(\varepsilon^{-1}). In this paper, we show that by leveraging a local error bound condition on the dual function, the proposed algorithm can achieve a better primal convergence time of O(ε2/(2+β)log2(ε1))\mathcal{O}\left(\varepsilon^{-2/(2+\beta)}\log_2(\varepsilon^{-1})\right), where β(0,1]\beta\in(0,1] is a local error bound parameter. As an example application of the general algorithm, we show that the distributed geometric median problem, which can be formulated as a constrained convex program, has its dual function non-smooth but satisfying the aforementioned local error bound condition with β=1/2\beta=1/2, therefore enjoying a convergence time of O(ε4/5log2(ε1))\mathcal{O}\left(\varepsilon^{-4/5}\log_2(\varepsilon^{-1})\right). This result improves upon the O(ε1)\mathcal{O}(\varepsilon^{-1}) convergence time bound achieved by existing distributed optimization algorithms. Simulation experiments also demonstrate the performance of our proposed algorithm.

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