Alternating Direction Method of Multipliers for Convex Optimization in Machine Learning - Interpretation and Implementation

Kuan-min Huang, H. Samani, Changguo Yang, Jie-Sheng Chen
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引用次数: 2

Abstract

The alternating direction method of multipliers (ADMM) is an important method to solve convex optimization problems. Due to the optimization tasks increased with the sort of machine learning applications, ADMM has gained much more attention recently. The principle of ADMM solves problems by breaking them into smaller pieces to specially limit the problem dimension. Each of the pieces are then easier to handle and speed up accordingly the total computational time to reach the optimum. With the speeding-up, it was widely adopted for optimization in a number of areas. In this paper, we start the explanation from the constrained convex optimization, and the relation between primal problem and dual problem. With the preliminary explanation, two optimization algorithms are introduced, including the dual ascent and the dual decomposition approaches. An introduction of augmented Lagrangian, the key to success ADMM, is also followed up ahead for elaboration. Finally, the main topic of ADMM is explained algorithmically based on the fundamentals, and an example code is outlined for implementation.
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机器学习中凸优化乘法器的交替方向法-解释与实现
乘法器交替方向法是求解凸优化问题的一种重要方法。随着机器学习应用种类的增加,优化任务的增加,ADMM近年来受到越来越多的关注。ADMM的原理是通过将问题分解成更小的部分来解决问题,以特别限制问题的维度。然后,每个部分都更容易处理,并相应地加快了总计算时间,以达到最佳。随着加速,它被广泛用于许多领域的优化。本文从约束凸优化问题,以及原始问题与对偶问题的关系入手,对约束凸优化问题进行了解释。在此基础上,介绍了两种优化算法,即对偶上升法和对偶分解法。本文还介绍了ADMM成功的关键——增广拉格朗日,以供进一步阐述。最后,在基本原理的基础上对ADMM的主要主题进行了算法解释,并给出了实现示例代码。
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