On the convergence of asynchronous parallel algorithm for large-scale linearly constrained minimization problem
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摘要
As a synchronization parallel framework, the parallel variable transformation (PVT) algorithm is effective to solve unconstrained optimization problems. In this paper, based on the idea that a constrained optimization problem is equivalent to a differentiable unconstrained optimization problem by introducing the Fischer Function, we propose an asynchronous PVT algorithm for solving large-scale linearly constrained convex minimization problems. This new algorithm can terminate when some processor satisfies terminal condition without waiting for other processors. Meanwhile, it can enhances practical efficiency for large-scale optimization problem. Global convergence of the new algorithm is established under suitable assumptions. And in particular, the linear rate of convergence does not depend on the number of processors.
论文关键词:Parallel algorithm,Constrained convex optimization,Nonlinear programming,Large-scale minimization
论文评审过程:Available online 7 February 2009.
论文官网地址:https://doi.org/10.1016/j.amc.2009.01.081