Distributed Estimation Using Non-regular Quantized Data

Y. Kim
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引用次数: 2

Abstract

We consider a distributed estimation where many nodes remotely placed at known locations collect the measurements of the parameter of interest, quantize these measurements, and transmit the quantized data to a fusion node; this fusion node performs the parameter estimation. Noting that quantizers at nodes should operate in a non-regular framework where multiple codewords or quantization partitions can be mapped from a single measurement to improve the system performance, we propose a low-weight estimation algorithm that finds the most feasible combination of codewords. This combination is found by computing the weighted sum of the possible combinations whose weights are obtained by counting their occurrence in a learning process. Otherwise, tremendous complexity will be inevitable due to multiple codewords or partitions interpreted from non-regular quantized data. We conduct extensive experiments to demonstrate that the proposed algorithm provides a statistically significant performance gain with low complexity as compared to typical estimation techniques.
基于非正则量化数据的分布式估计
我们考虑了一种分布式估计,其中许多节点远程放置在已知位置,收集感兴趣参数的测量值,量化这些测量值,并将量化数据传输到融合节点;该融合节点执行参数估计。注意到节点上的量化器应该在一个非规则的框架中运行,在这个框架中,多个码字或量化分区可以从单个测量中映射出来,以提高系统性能,我们提出了一种低权重估计算法,该算法可以找到最可行的码字组合。这种组合是通过计算可能组合的加权和来找到的,这些组合的权重是通过计算它们在学习过程中的出现次数来获得的。否则,由于从非规则量化数据中解释多个码字或分区,将不可避免地带来巨大的复杂性。我们进行了大量的实验来证明,与典型的估计技术相比,所提出的算法提供了统计上显着的性能增益,且复杂度较低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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