图相似性的网络互信息度量

IF 5.4 1区 物理与天体物理 Q1 PHYSICS, MULTIDISCIPLINARY
Helcio Felippe, Federico Battiston, Alec Kirkley
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引用次数: 0

摘要

网络分析中的各种任务,如网络群体聚类或识别时间图流中的异常情况,都需要对两个图之间的相似性进行度量。为了给下游科学分析提供有意义的数据摘要,用于这些任务的图相似性度量必须是有原则的、可解释的,并且能够在不同关注尺度上区分有意义的重叠网络结构和统计噪声。在这里,我们推导出了一系列图互信息度量,这些度量满足上述标准,并且只需使用基本信息论原理即可构建。我们的度量根据网络结构信息的不同编码捕捉网络之间的共享信息,我们的中尺度互信息度量允许在任何指定的网络粗粒度下进行网络比较。我们在真实和合成网络数据的一系列应用中测试了我们的测量方法,发现它们能有效突出各种系统中不同尺度网络相似性的直观方面。图相似性度量对于下游任务(包括聚类、嵌入和网络群体回归)至关重要。作者在此推导出了一系列图互信息度量,可对多种尺度的网络进行有原则、可解释和高效的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Network mutual information measures for graph similarity

Network mutual information measures for graph similarity
A wide range of tasks in network analysis, such as clustering network populations or identifying anomalies in temporal graph streams, require a measure of the similarity between two graphs. To provide a meaningful data summary for downstream scientific analyses, the graph similarity measures used for these tasks must be principled, interpretable, and capable of distinguishing meaningful overlapping network structure from statistical noise at different scales of interest. Here we derive a family of graph mutual information measures that satisfy these criteria and are constructed using only fundamental information theoretic principles. Our measures capture the information shared among networks according to different encodings of their structural information, with our mesoscale mutual information measure allowing for network comparison under any specified network coarse-graining. We test our measures in a range of applications on real and synthetic network data, finding that they effectively highlight intuitive aspects of network similarity across scales in a variety of systems. Graph similarity measures are essential for downstream tasks including clustering, embedding, and regression with populations of networks. Here the authors derive a family of graph mutual information measures that allow for a principled, interpretable, and efficient comparison of networks at multiple scales.
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来源期刊
Communications Physics
Communications Physics Physics and Astronomy-General Physics and Astronomy
CiteScore
8.40
自引率
3.60%
发文量
276
审稿时长
13 weeks
期刊介绍: Communications Physics is an open access journal from Nature Research publishing high-quality research, reviews and commentary in all areas of the physical sciences. Research papers published by the journal represent significant advances bringing new insight to a specialized area of research in physics. We also aim to provide a community forum for issues of importance to all physicists, regardless of sub-discipline. The scope of the journal covers all areas of experimental, applied, fundamental, and interdisciplinary physical sciences. Primary research published in Communications Physics includes novel experimental results, new techniques or computational methods that may influence the work of others in the sub-discipline. We also consider submissions from adjacent research fields where the central advance of the study is of interest to physicists, for example material sciences, physical chemistry and technologies.
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