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MAGMA: Multi-level accelerated gradient mirror descent algorithm for large-scale convex composite minimization

机译:maGma:用于大规模凸复合最小化的多级加速梯度镜下降算法

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摘要

Composite convex optimization models arise in several applications, and are especially prevalent in inverse problems with a sparsity inducing norm and in general convex optimization with simple constraints. The most widely used algorithms for convex composite models are accelerated first order methods, however they can take a large number of iterations to compute an acceptable solution for large-scale problems. In this paper we propose to speed up first order methods by taking advantage of the structure present in many applications and in image processing in particular. Our method is based on multi-level optimization methods and exploits the fact that many applications that give rise to large scale models can be modelled using varying degrees of fidelity. We use Nesterov’s acceleration techniques together with the multi-level approach to achieve an O(1/ √ ǫ) convergence rate, where ǫ denotes the desired accuracy. The proposed method has a better convergence rate than any other existing multi-level method for convex problems, and in addition has the same rate as accelerated methods, which is known to be optimal for first-order methods. Moreover, as our numerical experiments show, on large-scale face recognition problems our algorithm is several times faster than the state of the art.
机译:复合凸优化模型出现在几种应用中,并且在稀疏归纳范式的反问题中以及在具有简单约束的一般凸优化中尤为普遍。凸复合模型最广泛使用的算法是加速一阶方法,但是它们可能需要进行大量迭代才能为大规模问题计算出可接受的解决方案。在本文中,我们建议利用许多应用程序中存在的结构,尤其是图像处理中的结构,来加快一阶方法的速度。我们的方法基于多级优化方法,并利用以下事实:可以使用不同的保真度对许多产生大规模模型的应用程序进行建模。我们将Nesterov的加速技术与多级方法结合使用,以达到O(1 /√ǫ)收敛速度,其中ǫ表示所需的精度。所提出的方法具有比任何其他现有的凸问题多级方法更好的收敛速度,并且具有与加速方法相同的速度,这对于一阶方法是最佳的。而且,正如我们的数值实验所示,在大规模人脸识别问题上,我们的算法比现有技术快几倍。

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