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Consistent community detection in multi-layer network data

机译:多层网络数据中的一致群落检测

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摘要

We consider multi-layer network data where the relationships between pairs of elements are reflected in multiple modalities, and may be described by multivariate or even high-dimensional vectors. Under the multi-layer stochastic block model framework we derive consistency results for a least squares estimation of memberships. Our theorems show that, as compared to single-layer community detection, a multi-layer network provides much richer information that allows for consistent community detection from a much sparser network, with required edge density reduced by a factor of the square root of the number of layers. Moreover, the multi-layer framework can detect cohesive community structure across layers, which might be hard to detect by any singlelayer or simple aggregation. Simulations and a data example are provided to support the theoretical results.
机译:我们考虑多层网络数据,其中元素对之间的关系被反射在多个模态中,并且可以通过多变量甚至高维向量来描述。 在多层随机块模型框架下,我们导出了成员资格最小二乘估计的一致性结果。 我们的定理表明,与单层社区检测相比,多层网络提供了许多更丰富的信息,允许从稀疏网络中的一致群落检测,所需的边缘密度减少了数字的平方根的一个因素 层。 此外,多层框架可以通过任何单层或简单的聚合检测层跨层的粘性社区结构。 提供模拟和数据示例以支持理论结果。

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