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Convergence analysis of the direct extension of ADMM for multiple-block separable convex minimization

机译:多块可分离凸起最小化ADMM直接扩展的收敛性分析

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Recently, the alternating direction method of multipliers (ADMM) has found many efficient applications in various areas; and it has been shown that the convergence is not guaranteed when it is directly extended to the multiple-block case of separable convex minimization problems where there are m = 3 functions without coupled variables in the objective. This fact has given great impetus to investigate various conditions on both the model and the algorithm's parameter that can ensure the convergence of the direct extension of ADMM (abbreviated as "e-ADMM"). Despite some results under very strong conditions (e.g., at least (m - 1) functions should be strongly convex) that are applicable to the generic case with a general m, some others concentrate on the special case of m = 3 under the relatively milder condition that only one function is assumed to be strongly convex. We focus on extending the convergence analysis from the case of m = 3 to the more general case of m = 3. That is, we show the convergence of e-ADMM for the case of m = 3 with the assumption of only (m - 2) functions being strongly convex; and establish its convergence rates in different scenarios such as the worst-case convergence rates measured by iteration complexity and the globally linear convergence rate under stronger assumptions. Thus the convergence of e-ADMM for the general case of m = 4 is proved; this result seems to be still unknown even though it is intuitive given the known result of the case of m = 3. Even for the special case of m = 3, our convergence results turn out to be more general than the existing results that are derived specifically for the case of m = 3.
机译:最近,乘法器(ADMM)的交替方向方法在各个区域中发现了许多有效的应用;并且已经表明,当它直接扩展到具有m&gt的可分离凸起最小化问题的多块情况时,不会保证收敛; = 3个功能而无需耦合变量。这一事实有很大的推动能够调查模型和算法参数的各种条件,可以保证ADMM直接扩展的收敛(缩写为“E-ADMM”)。尽管有一些结果在非常强大的条件下(例如,至少(m-1)函数应该是强大的凸面,但适用于一般m的通用案例,一些其他人专注于相对较高的m = 3的特殊情况条件认为只有一个功能被认为是强凸的。我们专注于从M = 3的情况扩展到的收敛性分析到M&GT的更常规情况;也就是说,我们显示了M&GT的情况的E-ADMM的收敛性; = 3的假设仅(m - 2)功能强烈凸;并在不同场景中建立其收敛速率,例如通过迭代复杂度和全局线性收敛速率在更强的假设下测量的最坏情况的收敛速率。因此,e-ADMM为M&GT的一般情况的收敛性; = 4被证明;即使鉴于M = 3的情况的已知结果,此结果似乎仍然未知。即使对于M = 3的特殊情况,我们的趋同结果也比衍生的现有结果更普遍专门用于m = 3的情况。

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