次梯度方法
牛顿法
数学优化
迭代函数
收敛速度
趋同(经济学)
计算机科学
迭代法
局部收敛
最优化中的牛顿法
数学
钥匙(锁)
数学分析
物理
非线性系统
量子力学
经济增长
经济
计算机安全
作者
Ali Jadbabaie,Asuman Ozdaglar,Michael Zargham
标识
DOI:10.1109/cdc.2009.5400289
摘要
Most existing work uses dual decomposition and subgradient methods to solve network optimization problems in a distributed manner, which suffer from slow convergence rate properties. This paper proposes an alternative distributed approach based on a Newton-type method for solving minimum cost network optimization problems. The key component of the method is to represent the dual Newton direction as the solution of a discrete Poisson equation involving the graph Laplacian. This representation enables using an iterative consensus-based local averaging scheme (with an additional input term) to compute the Newton direction based only on local information. We show that even when the iterative schemes used for computing the Newton direction and the stepsize in our method are truncated, the resulting iterates converge superlinearly within an explicitly characterized error neighborhood. Simulation results illustrate the significant performance gains of this method relative to subgradient methods based on dual decomposition.
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