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Community Detection in Hypergraphs: Optimal Statistical Limit and Efficient Algorithms

机译:超图中的社区检测:最佳统计极限和高效算法

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In this paper, community detection in hypergraphs is explored. Under a generative hypergraph model called "d-wise hypergraph stochastic block model" (d-hSBM) which naturally extends the Stochastic Block Model (SBM) from graphs to d-uniform hypergraphs, the fundamental limit on the asymptotic minimax misclassified ratio is characterized. For proving the achievability, we propose a two-step polynomial time algorithm that provably achieves the fundamental limit in the sparse hypergraph regime. For proving the optimality, the lower bound of the minimax risk is set by finding a smaller parameter space which contains the most dominant error events, inspired by the analysis in the achievability part. It turns out that the minimax risk decays exponentially fast to zero as the number of nodes tends to infinity, and the rate function is a weighted combination of several divergence terms, each of which is the Renyi divergence of order 1/2 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. Experimental results on both synthetic and real-world data validate our theoretical finding.
机译:本文探讨了超图中的社区检测。在一种名为“D-WIES超图形随机块模型”(D-HSBM)的生成超图模型下,其自然地将随机块模型(SBM)从图中延伸到D成均匀显图像,对渐近最小的错误分类比的基本限制是特征。为了证明可实现性,我们提出了一种两步多项式时间算法,可从而可从而可从而实现稀疏超图制度的基本限制。为了证明最优性,通过找到包含最占主导地位错误事件的较小参数空间来设置最低限度风险的下限,这是通过可实现性部分的分析的启发。事实证明,随着所述节点的数量倾向于无穷大,Minimax风险衰减到零,并且速率函数是几种发散术语的加权组合,其中每个伯努利分布之间的订单1/2的renyi发散。涉及速率函数表征的Bernoulli分布是控制D-HSBM中的HyperUredges随机实例化的分布。合成和现实世界数据的实验结果验证了我们的理论发现。

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