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Extended ADMM and BCD for nonseparable convex minimization models with quadratic coupling terms: convergence analysis and insights

机译:扩展ADMM和BCD,用于具有二次耦合术语的非可分解凸起最小化模型:收敛分析和见解

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In this paper, we establish the convergence of the proximal alternating direction method of multipliers (ADMM) and block coordinate descent (BCD) method for nonseparable minimization models with quadratic coupling terms. The novel convergence results presented in this paper answer several open questions that have been the subject of considerable discussion. We firstly extend the 2-block proximal ADMM to linearly constrained convex optimization with a coupled quadratic objective function, an area where theoretical understanding is currently lacking, and prove that the sequence generated by the proximal ADMM converges in point-wise manner to a primal-dual solution pair. Moreover, we apply randomly permuted ADMM (RPADMM) to nonseparable multi-block convex optimization, and prove its expected convergence for a class of nonseparable quadratic programming problems. When the linear constraint vanishes, the 2-block proximal ADMM and RPADMM reduce to the 2-block cyclic proximal BCD method and randomly permuted BCD (RPBCD). Our study provides the first iterate convergence result for 2-block cyclic proximal BCD without assuming the boundedness of the iterates. We also theoretically establish the expected iterate convergence result concerning multi-block RPBCD for convex quadratic optimization. In addition, we demonstrate that RPBCD may have a worse convergence rate than cyclic proximal BCD for 2-block convex quadratic minimization problems. Although the results on RPADMM and RPBCD are restricted to quadratic minimization models, they provide some interesting insights: (1) random permutation makes ADMM and BCD more robust for multi-block convex minimization problems; (2) cyclic BCD may outperform RPBCD for nice problems, and RPBCD should be applied with caution when solving general convex optimization problems especially with a few blocks.
机译:在本文中,我们建立了具有二次耦合术语的乘法器(ADMM)的近端交替方向方法和块坐标阶段(BCD)方法的收敛性,具有二次耦合术语。本文提出的新型融合结果回答了几个开放的问题,这是具有相当大的讨论的主题。我们首先将2块近端ADMM扩展到具有耦合二次目标函数的线性约束凸优化,该区域当前缺乏理论理解,并证明由近端ADMM产生的序列以Pock-Wise的方式收敛到原始的双解决方案对。此外,我们将随机允许的ADMM(RPADMM)应用于不可分割的多块凸优化,并证明了其预期的一类非可分配的二次编程问题的收敛性。当线性约束消失时,2块近端ADMM和RPADMM减少到2块循环近端BCD方法和随机置换的BCD(RPBCD)。我们的研究提供了2块循环近端BCD的第一个迭代收敛结果,而不假设迭代的有界性。理论上,我们还建立了关于多块RPBCD的预期迭代收敛结果,用于凸二次优化。此外,我们证明RPBCD可能具有比循环近端BCD更差的收​​敛速度,用于2块凸额定最小化问题。虽然RPADMM和RPBCD的结果仅限于二次最小化模型,但它们提供了一些有趣的见解:(1)随机排列使得ADMM和BCD对多块凸起最小化问题更加强大; (2)循环BCD可能超过RPBCD对于良好的问题,并且在解决一般凸优化问题时,应小心谨慎地应用RPBCD,尤其是几个块。

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