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On the fundamental statistical limit of community detection in random hypergraphs

机译:关于随机超图中社区检测的基本统计极限

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The problem of community detection in random hypergraphs is considered. We extend the Stochastic Block Model (SBM) from graphs to hypergraphs with d-uniform hyperedges, which we term “d-wise hyper stochastic block model” (d-hSBM) and consider a homogeneous and approximately equal-sized K community case. For d = 3, we fully characterize the exponentially decaying rate of the minimax risk in recovering the underlying communities, where the loss function is the mis-match ratio between the true community assignment and the recovered one. It turns out that the rate function is a weighted combination of several divergence terms, each of which is the Renyi divergence of order 1 between two Bernoulli distributions. The Bernoulli distributions involved in the characterization of the rate function are those governing the random instantiation of hyperedges in d-hSBM. The lower bound is set by finding a smaller parameter space where we can analyze the risk, while the upper bound is achieved with the Maximum Likelihood estimator. The technical contribution is to show that upper bound has the same decaying rate as the lower bound, which involves careful bounding of the various probabilities of errors. Finally, we relate the minimax risk to the recovery criterion under the Bayesian framework and derive a threshold condition for exact recovery.
机译:考虑了随机超图中的社区检测问题。我们将随机块模型(SBM)从图扩展到具有d均匀超边的超图,我们将其称为“ d方向超随机块模型”(d-hSBM),并考虑一个均质且大小相等的K社区案例。对于d = 3,我们充分描述了恢复基础社区时极小极大风险的指数衰减率,其中损失函数是真实社区分配与恢复的社区分配之间的失配率。事实证明,利率函数是几个散度项的加权组合,每个散度项是两个伯努利分布之间的1阶仁义散度。速率函数表征中涉及的伯努利分布是那些控制d-hSBM中超边的随机实例化的分布。通过找到较小的参数空间来设置下限,我们可以在其中分析风险,而上限是通过最大似然估计器实现的。技术贡献是表明上限与下限具有相同的衰减率,这涉及仔细确定各种错误概率。最后,我们将最小最大风险与贝叶斯框架下的恢复标准相关联,并得出精确恢复的阈值条件。

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