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首页> 外文期刊>IEEE Transactions on Signal Processing >Diffusion LMS for Multitask Problems With Local Linear Equality Constraints
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Diffusion LMS for Multitask Problems With Local Linear Equality Constraints

机译:具有局部线性等式约束的多任务问题的扩散LMS

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摘要

We consider distributed multitask learning problems over a network of agents where each agent is interested in estimating its own parameter vector, also called task, and where the tasks at neighboring agents are related according to a set of linear equality constraints. Each agent possesses its own convex cost function of its parameter vector and a set of linear equality constraints involving its own parameter vector and the parameter vectors of its neighboring agents. We propose an adaptive stochastic algorithm based on the projection gradient method and diffusion strategies in order to allow the network to optimize the individual costs subject to all constraints. Although the derivation is carried out for linear equality constraints, the technique can be applied to other forms of convex constraints. We conduct a detailed mean-square-error analysis of the proposed algorithm and derive closed-form expressions to predict its learning behavior. We provide simulations to illustrate the theoretical findings. Finally, the algorithm is employed for solving two problems in a distributed manner: A minimum-cost flow problem over a network and a space–time varying field reconstruction problem.
机译:我们考虑了代理网络上的分布式多任务学习问题,其中每个代理都对估计自己的参数向量(也称为任务)感兴趣,并且根据一组线性相等约束,相邻代理处的任务也相关。每个代理都具有其参数向量自己的凸成本函数和一组线性等式约束,这些约束涉及其自身的参数向量及其相邻代理的参数向量。我们提出一种基于投影梯度法和扩散策略的自适应随机算法,以使网络能够在所有约束条件下优化单个成本。尽管对线性相等约束进行了推导,但是该技术可以应用于其他形式的凸约束。我们对提出的算法进行详细的均方误差分析,并得出封闭形式的表达式以预测其学习行为。我们提供模拟以说明理论发现。最后,该算法用于分布式解决两个问题:网络上的最小成本流问题和时空变化场重构问题。

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