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Control approach to distributed optimization

机译:分布式优化的控制方法

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摘要

In this paper, we propose a novel computation model for solving the distributed optimization problem where the objective function is formed by the sum of convex functions available to individual agent. Our approach differentiates from the existing approach by local convex mixing and gradient searching in that we force the states of the model to the global optimal point by controlling the subgradient of the global optimal function. In this way, the model we proposed does not suffer from the limitation of diminishing step size in gradient searching and allows fast asymptotic convergence. The model also shows robustness to additive noise, which is a main curse for algorithms based on convex mixing or consensus.
机译:在本文中,我们提出了一种新的计算模型,用于解决分布式优化问题,其中目标函数由单个代理可用的凸函数之和形成。我们的方法通过局部凸混合和梯度搜索与现有方法的不同之处在于,我们通过控制全局最优函数的次梯度将模型的状态强制为全局最优点。这样,我们提出的模型就不会受到梯度搜索中步长减小的限制,并且可以实现快速渐近收敛。该模型还显示了对加性噪声的鲁棒性,这是基于凸混合或共识算法的主要诅咒。

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