A Hierarchical Dual Decomposition-based Distributed Optimization Algorithm combining Quasi-Newton Steps and Bundle Methods

V. Yfantis, M. Ruskowski
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引用次数: 1

Abstract

This paper presents a hierarchical distributed optimization algorithm based on quasi-Newton update steps. Separable convex optimization problems are decoupled through dual decomposition and solved in a distributed fashion by coordinating the solutions of the subproblems through dual variables. The proposed algorithm updates the dual variables by approximating the Hessian of the dual function through collected subgradient information, analogously to quasi-Newton methods. As the dual maximization problem is generally nonsmooth, a smooth approximation might show poor performance. To this end cutting planes, analogous to bundle methods, are constructed that take the nonsmoothness of the dual function into account and lead to a better convergence behavior near the optimum. The proposed algorithm is evaluated on a large set of benchmark problems and compared to the subgradient method and to the bundle trust method for nonsmooth optimization.
结合准牛顿步法和束法的分层对偶分布优化算法
提出了一种基于准牛顿更新步骤的分层分布式优化算法。可分离凸优化问题通过对偶分解解耦,并通过对偶变量协调子问题的解以分布式方式求解。该算法通过收集子梯度信息逼近对偶函数的Hessian来更新对偶变量,类似于准牛顿方法。由于对偶最大化问题通常是非光滑的,因此光滑近似可能会表现出较差的性能。为此,构造了类似于束方法的切割平面,该切割平面考虑了对偶函数的非光滑性,并在最优附近获得了更好的收敛性。在大量的基准问题上对该算法进行了评价,并与子梯度法和束信任法进行了非光滑优化比较。
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