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Moment-Based Parameter Estimation in Binomial Random Intersection Graph Models

机译:二项式随机相交图模型中基于矩的参数估计

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Binomial random intersection graphs can be used as parsimonious statistical models of large and sparse networks, with one parameter for the average degree and another for transitivity, the tendency of neighbours of a node to be connected. This paper discusses the estimation of these parameters from a single observed instance of the graph, using moment estimators based on observed degrees and frequencies of 2-stars and triangles. The observed data set is assumed to be a subgraph induced by a set of n_0 nodes sampled from the full set of n nodes. We prove the consistency of the proposed estimators by showing that the relative estimation error is small with high probability for n_0 ≫ n~(2/3) ≫ 1. As a byproduct, our analysis confirms that the empirical transitivity coefficient of the graph is with high probability close to the theoretical clustering coefficient of the model.
机译:二项式随机相交图可以用作大型和稀疏网络的简约统计模型,其中一个参数表示平均程度,另一个参数表示可传递性,即要连接节点的邻居的趋势。本文讨论了基于单个观测图实例的这些参数的估算,并使用基于2星和三角形的观测程度和频率的矩估算器。假定观察到的数据集是由从整个n个节点集合中采样的n_0个节点集合所诱发的子图。通过证明n_0 is n〜(2/3)≫ 1的相对估计误差很小,概率较高,可以证明所提出估计的一致性。作为副产品,我们的分析证实了图的经验传递系数为与模型的理论聚类系数接近的高概率。

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