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Information Theoretic Comparison of Stochastic Graph Models: Some Experiments

机译:随机图模型的信息理论比较:一些实验

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摘要

The Modularity-Q measure of community structure is known to falsely ascribe community structure to random graphs, at least when it is naively applied. Although Q is motivated by a simple kind of comparison of stochastic graph models, it has been suggested that a more careful comparison in an information-theoretic framework might avoid problems like this one. Most earlier papers exploring this idea have ignored the issue of skewed degree distributions and have only done experiments on a few small graphs. By means of a large-scale experiment on over 100 large complex networks, we have found that modeling the degree distribution is essential. Once this is done, the resulting information-theoretic clustering measure does indeed avoid Q's bad property of seeing cluster structure in random graphs.
机译:已知社区结构的Modularity-Q度量至少在天真的应用时会错误地将社区结构归因于随机图。尽管Q是由一种简单的随机图模型比较所激发的,但已建议在信息理论框架中进行更仔细的比较可能会避免此类问题。探索该想法的大多数早期论文都忽略了偏度分布的问题,仅在一些小图形上进行了实验。通过在100多个大型复杂网络上进行的大规模实验,我们发现建模度分布至关重要。一旦做到这一点,所得的信息理论聚类测度确实可以避免Q在随机图中看到聚类结构的不良特性。

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