Accelerated Alternating Direction Method of Multipliers

Mojtaba Kadkhodaie, Konstantina Christakopoulou, Maziar Sanjabi, A. Banerjee
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引用次数: 58

Abstract

Recent years have seen a revival of interest in the Alternating Direction Method of Multipliers (ADMM), due to its simplicity, versatility, and scalability. As a first order method for general convex problems, the rate of convergence of ADMM is O(1=k) [4, 25]. Given the scale of modern data mining problems, an algorithm with similar properties as ADMM but faster convergence rate can make a big difference in real world applications. In this paper, we introduce the Accelerated Alternating Direction Method of Multipliers (A2DM2) which solves problems with the same structure as ADMM. When the objective function is strongly convex, we show that A2DM2 has a O(1=k2) convergence rate. Unlike related existing literature on trying to accelerate ADMM, our analysis does not need any additional restricting assumptions. Through experiments, we show that A2DM2 converges faster than ADMM on a variety of problems. Further, we illustrate the versatility of the general A2DM2 on the problem of learning to rank, where it is shown to be competitive with the state-of-the-art specialized algorithms for the problem on both scalability and accuracy.
加速交替乘数法
近年来,乘数交替法(ADMM)因其简便性、通用性和可扩展性而重新受到关注。作为一般凸问题的一阶方法,ADMM 的收敛速度为 O(1=k) [4, 25]。考虑到现代数据挖掘问题的规模,一种具有与 ADMM 类似特性但收敛速度更快的算法可以在实际应用中大显身手。本文介绍了加速交替乘法(A2DM2),它能解决与 ADMM 结构相同的问题。当目标函数为强凸函数时,我们证明 A2DM2 的收敛速率为 O(1=k2)。与试图加速 ADMM 的现有相关文献不同,我们的分析不需要任何额外的限制性假设。通过实验,我们发现在各种问题上,A2DM2 的收敛速度都比 ADMM 快。此外,我们还在学习排序问题上说明了通用 A2DM2 的多功能性,证明它在可扩展性和准确性上都能与最先进的专门算法相媲美。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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