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Penalty-based multitask distributed adaptation over networks with constraints

机译:基于惩罚的多任务通过约束网络分布式适应

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摘要

Multitask distributed optimization over networks enables the agents to cooperate locally to estimate multiple related parameter vectors. In this work, we consider multitask estimation problems over mean-square-error (MSE) networks where each agent is interested in estimating its own parameter vector, also called task, and where the tasks are related according to a set of linear equality constraints. We assume that each agent possesses its own cost and that the set of constraints is distributed among the agents. In order to solve the multitask problem, a cooperative algorithm based on penalty method is derived. Some results on its stability and convergence properties are also provided. Simulations are conducted to illustrate the theoretical results and show the efficiency of the strategy.
机译:通过网络的多任务分布式优化使得代理能够在本地协作以估计多个相关参数向量。在这项工作中,我们考虑多任务估计问题在均方错误(MSE)网络上,其中每个代理有兴趣估计其自己的参数矢量,也称为任务,以及任务与一组线性平等约束相关的地方。我们假设每个特工都具有自己的成本,并且该组约束是在代理商中分配的。为了解决多任务问题,导出了一种基于惩罚方法的协作算法。还提供了其稳定性和收敛性的结果。进行模拟以说明理论结果并显示策略的效率。

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