Sparse distributed learning based on diffusion minimum generalised rank norm

Sowjanya Modalavalasa, U. K. Sahoo, A. Sahoo
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引用次数: 2

Abstract

: The traditional least-squares based diffusion least mean squares is not robust against outliers present in either desired data or input data. The diffusion minimum generalised rank (GR) norm algorithm proposed in the earlier works of the authors was able to effectively estimate the parameter of interest in presence of outliers in both desired and input data. However, this manuscript deals with the robust distributed estimation over distributed networks exploiting sparsity underlying in the system model. The proposed algorithm is based on both GR norm and compressive sensing, where GR norm ensures robustness against outliers in input as well as desired data. The techniques from compressive sensing endow the network with adaptive learning of the sparse structure form the incoming data in real-time and it also enables tracking of the sparsity variations of the system model. The mean and mean square convergence of the proposed algorithm are analysed and the conditions under which the proposed algorithm outperforms the unregularised diffusion GR norm algorithm are also investigated. The proposed algorithms are validated for three different applications namely distributed parameter estimation, tracking and distributed power spectrum estimation.
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基于扩散最小广义秩范数的稀疏分布学习
传统的基于最小二乘的扩散最小均二乘对于存在于期望数据或输入数据中的异常值都不具有鲁棒性。作者在早期工作中提出的扩散最小广义秩(GR)范数算法能够在期望数据和输入数据中存在异常值的情况下有效地估计感兴趣的参数。然而,本文讨论了利用系统模型中潜在的稀疏性在分布式网络上的鲁棒分布估计。该算法基于GR范数和压缩感知,其中GR范数确保了对输入和期望数据中的异常值的鲁棒性。压缩感知技术赋予网络对输入数据的稀疏结构进行实时自适应学习的能力,并使其能够跟踪系统模型的稀疏度变化。分析了该算法的均值收敛性和均方收敛性,并研究了该算法优于非正则扩散GR范数算法的条件。在分布式参数估计、跟踪和分布式功率谱估计三种不同的应用中验证了所提算法的有效性。
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