基于som的相似性指数度量:量化多元结构之间的相互作用

A. Hegde, Deniz Erdoğmuş, Y. Rao, J. Príncipe, Jianbo Gao
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引用次数: 6

摘要

这项工作解决了量化信号之间不对称函数关系的问题。我们特别考虑了先前提出的相似性索引,它在概念上很强大,但在计算上非常昂贵。复杂度随着信号中样本数量的平方而增加。为了克服这一困难,在相似性指数评估过程中引入了一个自组织映射,该映射经过训练来模拟感兴趣信号的统计分布。基于SOM的技术同样准确,但与传统测量相比,计算成本更低。通过比较原始方法和基于som的相似度指数方法对合成混沌信号和真实脑电信号混合的处理结果,证明了这些结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SOM-based similarity index measure: quantifying interactions between multivariate structures
This work addresses the issue of quantifying asymmetric functional relationships between signals. We specifically consider a previously proposed similarity index that is conceptually powerful, yet computationally very expensive. The complexity increases with the square of the number of samples in the signals. In order to counter this difficulty, a self-organizing map that is trained to model the statistical distribution of the signals of interest is introduced in the similarity index evaluation procedure. The SOM based technique is equally accurate, but computationally less expensive compared to the conventional measure. These results are demonstrated by comparing the original and SOM-based similarity index approaches on synthetic chaotic signal and real EEG signal mixtures.
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