基于共识的无线传感器网络分布式主成分分析

Sergio Valcarcel Macua, P. Belanovic, S. Zazo
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引用次数: 69

摘要

主成分分析是一种强大的数据分析和压缩技术,在无线传感器网络中有着广泛的应用前景。然而,它的集中式实现(融合中心收集所有样本)在能耗、可伸缩性和容错性方面效率低下。以前的分布式方法降低了通信成本,但不缺乏灵活性,因为如果网络没有完全连接,它们需要多跳通信。我们提出了两种完全分布式的基于共识的算法,保证收敛到全局结果,只使用邻居之间的局部通信,而不考虑数据分布或网络的稀疏性:CB-DPCA基于寻找局部协方差矩阵的特征向量,而CB-EM-DPCA是期望最大化算法的分布式版本。两者都提供了实现近似的紧密性和相关通信成本之间的灵活权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Consensus-based distributed principal component analysis in wireless sensor networks
Principal component analysis is a powerful technique for data analysis and compression, with a wide range of potential applications in wireless sensor networks. However, its centralized implementation, with a fusion center collecting all the samples, is inefficient in terms of energy consumption, scalability, and fault tolerance. Previous distributed approaches reduce the communication cost, but not the lack of flexibility, as they require multi-hop communications if the network is not fully connected. We present two fully distributed consensus-based algorithms that are guaranteed to converge to the global results, using only local communications among neighbors, regardless of the data distribution or the sparsity of the network: CB-DPCA is based on finding the eigenvectors of local covariance matrices, while CB-EM-DPCA is a distributed version of the expectation maximization algorithm. Both offer a flexible trade-off between the tightness of the achieved approximation and the associated communication cost.
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