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Sparse Distributed Estimation via Heterogeneous Diffusion Adaptive Networks

机译:通过异构扩散自适应网络进行稀疏分布估计

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摘要

Recently, diffusion networks have been proposed to identify sparse linear systems which employ sparsity-aware algorithms like the zero-attracting LMS (ZA-LMS) at each node to exploit sparsity. In this brief, we show that the same optimum performance as reached by the aforementioned networks can also be achieved by a “heterogeneous” network with only a fraction of the nodes deploying ZA-LMS-based adaptation, provided that the ZA-LMS-based nodes are distributed over the network maintaining some “uniformity.” Reduction in the number of sparsity-aware nodes reduces the overall computational burden of the network. We show analytically and also by simulation studies that the only adjustment needed to achieve this reduction is a proportional increase in the value of the optimum zero attracting coefficient.
机译:近来,已经提出了扩散网络来识别稀疏线性系统,该稀疏线性系统在每个节点处采用稀疏感知算法,例如零吸引LMS(ZA-LMS),以利用稀疏性。在此摘要中,我们表明,通过“异构”网络也可以实现与上述网络相同的最佳性能,前提是只有一部分节点部署基于ZA-LMS的自适应,前提是基于ZA-LMS节点分布在网络上,保持一定的“一致性”。稀疏感知节点数量的减少减少了网络的总体计算负担。我们通过分析和仿真研究表明,实现此减小所需的唯一调整是最佳零吸引系数的值成比例地增加。

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