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A block coordinate variable metric forward-backward algorithm

机译:块坐标变量度量向前-向后算法

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摘要

A number of recent works have emphasized the prominent role played by the Kurdyka-Aojasiewicz inequality for proving the convergence of iterative algorithms solving possibly nonsmoothonconvex optimization problems. In this work, we consider the minimization of an objective function satisfying this property, which is a sum of two terms: (i) a differentiable, but not necessarily convex, function and (ii) a function that is not necessarily convex, nor necessarily differentiable. The latter function is expressed as a separable sum of functions of blocks of variables. Such an optimization problem can be addressed with the Forward-Backward algorithm which can be accelerated thanks to the use of variable metrics derived from the Majorize-Minimize principle. We propose to combine the latter acceleration technique with an alternating minimization strategy which relies upon a flexible update rule. We give conditions under which the sequence generated by the resulting Block Coordinate Variable Metric Forward-Backward algorithm converges to a critical point of the objective function. An application example to a nonconvex phase retrieval problem encountered in signal/image processing shows the efficiency of the proposed optimization method.
机译:最近的许多工作都强调了Kurdyka-Aojasiewicz不等式在证明迭代算法的收敛性方面所起的显著作用,该迭代算法解决了可能的非平滑/非凸优化问题。在这项工作中,我们考虑满足该特性的目标函数的最小值,该目标函数是两个项的和:(i)可微但不一定是凸函数,并且(ii)一个不一定是凸函数,也不一定是凸函数可区分的。后一个函数表示为变量块的功能的可分离总和。可以使用前向后向算法解决此类优化问题,该算法由于使用了从Majorize-Minimize原理派生的可变度量而得以加速。我们建议将后一种加速技术与依赖于灵活更新规则的交替最小化策略结合起来。我们给出了这样的条件,在该条件下,结果块坐标变量度量向前-向后算法生成的序列收敛到目标函数的临界点。一个在信号/图像处理中遇到的非凸相位检索问题的应用实例说明了所提出的优化方法的效率。

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