具有异构社区结构的多层网络中的社区提取。

IF 4.3 3区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Journal of Machine Learning Research Pub Date : 2017-01-01
James D Wilson, John Palowitch, Shankar Bhamidi, Andrew B Nobel
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引用次数: 0

摘要

多层网络是捕捉和建模固定对象组之间的多个、二进制或加权关系的有用方法。虽然社区检测已被证明是分析单层网络的一种有用的探索性技术,但多层网络的社区检测方法的开发仍处于初级阶段。我们提出并研究了一种称为多层提取的程序,该程序可以识别多层网络中的密连接顶点层集。多层提取利用基于显著性的分数,该分数通过与固定度随机图模型的比较来量化观察到的顶点层集的连通性。多层提取直接处理具有异构层的网络,其中社区结构可能因层而异。该过程可以捕获重叠的社区,以及不属于任何社区的背景顶点层对。在多层随机块模型下,我们建立了所提出的多层分数的顶点层集优化器的一致性。我们研究了多层提取在三个应用程序和模拟试验台上的性能。我们的理论和数值评估表明,多层提取是分析复杂多层网络的有效探索工具。公开代码可在https://github.com/jdwilson4/MultilayerExtraction.
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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Community Extraction in Multilayer Networks with Heterogeneous Community Structure.

Multilayer networks are a useful way to capture and model multiple, binary or weighted relationships among a fixed group of objects. While community detection has proven to be a useful exploratory technique for the analysis of single-layer networks, the development of community detection methods for multilayer networks is still in its infancy. We propose and investigate a procedure, called Multilayer Extraction, that identifies densely connected vertex-layer sets in multilayer networks. Multilayer Extraction makes use of a significance based score that quantifies the connectivity of an observed vertex-layer set through comparison with a fixed degree random graph model. Multilayer Extraction directly handles networks with heterogeneous layers where community structure may be different from layer to layer. The procedure can capture overlapping communities, as well as background vertex-layer pairs that do not belong to any community. We establish consistency of the vertex-layer set optimizer of our proposed multilayer score under the multilayer stochastic block model. We investigate the performance of Multilayer Extraction on three applications and a test bed of simulations. Our theoretical and numerical evaluations suggest that Multilayer Extraction is an effective exploratory tool for analyzing complex multilayer networks. Publicly available code is available at https://github.com/jdwilson4/MultilayerExtraction.

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来源期刊
Journal of Machine Learning Research
Journal of Machine Learning Research 工程技术-计算机:人工智能
CiteScore
18.80
自引率
0.00%
发文量
2
审稿时长
3 months
期刊介绍: The Journal of Machine Learning Research (JMLR) provides an international forum for the electronic and paper publication of high-quality scholarly articles in all areas of machine learning. All published papers are freely available online. JMLR has a commitment to rigorous yet rapid reviewing. JMLR seeks previously unpublished papers on machine learning that contain: new principled algorithms with sound empirical validation, and with justification of theoretical, psychological, or biological nature; experimental and/or theoretical studies yielding new insight into the design and behavior of learning in intelligent systems; accounts of applications of existing techniques that shed light on the strengths and weaknesses of the methods; formalization of new learning tasks (e.g., in the context of new applications) and of methods for assessing performance on those tasks; development of new analytical frameworks that advance theoretical studies of practical learning methods; computational models of data from natural learning systems at the behavioral or neural level; or extremely well-written surveys of existing work.
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