将信息论与网络图分析相结合的一种基于度分布的度量方法。

Michael W Hadley, Matt F McGranaghan, Aaron Willey, Chun Wai Liew, Elaine R Reynolds
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引用次数: 6

摘要

背景:人类和非人类大脑的详细连接图正在用新技术生成,图形度量在理解这些结构的一般组织特征方面很有帮助。神经网络似乎具有小世界特性:它们具有聚集的区域,同时保持诸如平均路径长度短等综合特征。结果:我们通过我们自己的变量System Difference (SD)捕获了具有短平均路径长度的聚类网络的结构特征,该变量对于较大的图系统来说计算简单且可计算。SD是通过对系统中任意两个节点之间连接模式的所有差异进行平均而生成的一种雅卡迪亚度量。我们计算了大量随机矩阵样本的SD,发现高SD的矩阵具有较低的平均路径长度和较多的簇化结构。SD是一种度量度分布的方法,其高SD矩阵使熵性质最大化。Phi (Φ)是一种评估系统整合信息能力的信息理论度量,它与标准差有很好的相关性——在11个节点以上的系统中,标准差解释了90%以上的方差(测试了4到13个节点)。然而,新版本的Φ与SD度量的关系并不好。结论:新的网络测量SD提供了与小世界性质相关的高熵结构和度分布之间的联系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A new measure based on degree distribution that links information theory and network graph analysis.

A new measure based on degree distribution that links information theory and network graph analysis.

A new measure based on degree distribution that links information theory and network graph analysis.

A new measure based on degree distribution that links information theory and network graph analysis.

Background: Detailed connection maps of human and nonhuman brains are being generated with new technologies, and graph metrics have been instrumental in understanding the general organizational features of these structures. Neural networks appear to have small world properties: they have clustered regions, while maintaining integrative features such as short average pathlengths.

Results: We captured the structural characteristics of clustered networks with short average pathlengths through our own variable, System Difference (SD), which is computationally simple and calculable for larger graph systems. SD is a Jaccardian measure generated by averaging all of the differences in the connection patterns between any two nodes of a system. We calculated SD over large random samples of matrices and found that high SD matrices have a low average pathlength and a larger number of clustered structures. SD is a measure of degree distribution with high SD matrices maximizing entropic properties. Phi (Φ), an information theory metric that assesses a system's capacity to integrate information, correlated well with SD - with SD explaining over 90% of the variance in systems above 11 nodes (tested for 4 to 13 nodes). However, newer versions of Φ do not correlate well with the SD metric.

Conclusions: The new network measure, SD, provides a link between high entropic structures and degree distributions as related to small world properties.

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