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CONVERGENCE ANALYSIS OF DOUGLAS-RACHFORD SPLITTING METHOD FOR 'STRONGLY plus WEAKLY' CONVEX PROGRAMMING

机译:Douglas-Rachford分裂方法的收敛性分析“强大加上弱”凸编程

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摘要

We consider the convergence of the Douglas-Rachford splitting method (DRSM) for minimizing the sum of a strongly convex function and a weakly convex function; this setting has various applications, especially in some sparsity-driven scenarios with the purpose of avoiding biased estimates which usually occur when convex penalties are used. Though the convergence of the DRSM has been well studied for the case where both functions are convex, its results for some nonconvexfunction- involved cases, including the "strongly + weakly" convex case, are still in their infancy. In this paper, we prove the convergence of the DRSM for the "strongly + weakly" convex setting under relatively mild assumptions compared with some existing work in the literature. Moreover, we establish the rate of asymptotic regularity and the local linear convergence rate in the asymptotical sense under some regularity conditions.
机译:我们考虑Douglas-Rachford分裂方法(DRSM)的收敛,以使强凸功能和弱凸起功能最小化; 此设置具有各种应用,尤其是在一些稀疏驱动的方案中,目的是避免使用凸面惩罚时通常发生的偏置估计。 虽然DRSM的融合已经很好地研究了两个函数所在的情况,但其结果对于一些非谐波功能涉及的案例,包括“强烈+弱”凸面的情况,仍处于初期阶段。 在本文中,与文献中的一些现有工作相比,我们证明了DRSM的收敛性与相对温和的假设相比相对温和的假设。 此外,我们在一些规律性条件下建立了渐近规律性和局部线性收敛速度的效率。

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