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Inferring Meaningful Communities from Topology-Constrained Correlation Networks

机译:从拓扑约束的相关网络推断有意义的社区

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摘要

Community structure detection is an important tool in graph analysis. This can be done, among other ways, by solving for the partition set which optimizes the modularity scores . Here it is shown that topological constraints in correlation graphs induce over-fragmentation of community structures. A refinement step to this optimization based on Linear Discriminant Analysis (LDA) and a statistical test for significance is proposed. In structured simulation constrained by topology, this novel approach performs better than the optimization of modularity alone. This method was also tested with two empirical datasets: the Roll-Call voting in the 110th US Senate constrained by geographic adjacency, and a biological dataset of 135 protein structures constrained by inter-residue contacts. The former dataset showed sub-structures in the communities that revealed a regional bias in the votes which transcend party affiliations. This is an interesting pattern given that the 110th Legislature was assumed to be a highly polarized government. The -amylase catalytic domain dataset (biological dataset) was analyzed with and without topological constraints (inter-residue contacts). The results without topological constraints showed differences with the topology constrained one, but the LDA filtering did not change the outcome of the latter. This suggests that the LDA filtering is a robust way to solve the possible over-fragmentation when present, and that this method will not affect the results where there is no evidence of over-fragmentation.
机译:社区结构检测是图分析中的重要工具。除其他方式外,这可以通过求解优化模块化得分的分区集来完成。此处显示了相关图中的拓扑约束导致了社区结构的过度碎片化。提出了基于线性判别分析(LDA)和显着性统计检验的优化方法。在受拓扑约束的结构化仿真中,这种新颖的方法比单独优化模块性能更好。此方法还通过两个经验数据集进行了测试:第110届美国参议院的点名投票受地理邻近性约束,而135个蛋白质结构的生物学数据集受到残基间接触的约束。以前的数据集显示了社区中的子结构,这些子结构揭示了投票中超越了党派归属的地区性偏见。考虑到第110届立法机关是高度两极化的政府,这是一个有趣的模式。在有和没有拓扑约束(残基间接触)的情况下,分析了-淀粉酶催化域数据集(生物学数据集)。没有拓扑约束的结果显示与拓扑约束之一的差异,但是LDA过滤不会改变后者的结果。这表明,LDA滤波是解决存在时可能出现的过度碎片的一种可靠方法,并且在没有过度碎片迹象的情况下,该方法不会影响结果。

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  • 年(卷),期 -1(9),11
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  • 页码 e113438
  • 总页数 9
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