论文标题

快速分散的线性函数在边缘波动图上

Fast Decentralized Linear Functions Over Edge Fluctuating Graphs

论文作者

Mollaebrahim, Siavash, Beferull-Lozano, Baltasar

论文摘要

实现线性转换是分散的信号处理框架中的关键任务,该任务在通过多节点网络分布的数据集上执行学习任务。这种网络可以由图表示。最近,已经提出了一些分散的方法来通过利用图形移动算子的概念来计算线性转换,该图形示意图捕获图形的局部结构。但是,现有的方法具有一些缺点,例如考虑一些线性转换的一些特殊实例,或者通过假设给出一个偏移矩阵以使其特征向量的子集跨越了感兴趣的子空间,从而减少了转换家庭。相比之下,本文通过依靠图形移动运算符的概念来开发一个以分散方式计算以分散方式计算一类线性转换的框架。该方法的主要目标是计算少量迭代中所需的线性转换。为此,采用了一组连续的图形转移操作员,提出了一个新的优化问题,其目标是尽可能快地计算所需的转换。此外,通常,网络的拓扑,尤其是无线传感器网络,由于节点故障或随机链接而随机变化。在本文中,研究了边缘波动对所提出方法性能的影响。为了处理边缘波动的负面影响,提出了一种基于在线内核的方法,该方法使节点能够通过其手头信息估算错过的值。所提出的方法还可以用于稀疏网络图或减少节点之间的本地交换数量,从而将传感器的功率节省在无线传感器网络中。

Implementing linear transformations is a key task in the decentralized signal processing framework, which performs learning tasks on data sets distributed over multi-node networks. That kind of network can be represented by a graph. Recently, some decentralized methods have been proposed to compute linear transformations by leveraging the notion of graph shift operator, which captures the local structure of the graph. However, existing approaches have some drawbacks such as considering some special instances of linear transformations, or reducing the family of transformations by assuming that a shift matrix is given such that a subset of its eigenvectors spans the subspace of interest. In contrast, this paper develops a framework for computing a wide class of linear transformations in a decentralized fashion by relying on the notion of graph shift operator. The main goal of the proposed method is to compute the desired linear transformation in a small number of iterations. To this end, a set of successive graph shift operators is employed, then, a new optimization problem is proposed whose goal is to compute the desired transformation as fast as possible. In addition, usually, the topology of the networks, especially the wireless sensor networks, change randomly because of node failures or random links. In this paper, the effect of edge fluctuations on the performance of the proposed method is studied. To deal with the negative effect of edge fluctuations, an online kernel-based method is proposed which enables nodes to estimate the missed values with their at hand information. The proposed method can also be employed to sparsify the network graph or reduce the number of local exchanges between nodes, which saves sensors power in the wireless sensor networks.

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