Community Detection in Hypergraphs, Spiked Tensor Models, and Sum-of-Squares

2017 International Conference on Sampling Theory and Applications (SampTA)(2018)

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摘要
We study the problem of community detection in hypergraphs under a stochastic block model. Similarly to how the stochastic block model in graphs suggests studying spiked random matrices, our model motivates investigating statistical and computational limits of exact recovery in a certain spiked tensor model. In contrast with the matrix case, the spiked model naturally arising from community detection in hypergraphs is different from the one arising in the so-called tensor Principal Component Analysis model. We investigate the effectiveness of algorithms in the Sum-of-Squares hierarchy on these models. Interestingly, our results suggest that these two apparently similar models exhibit significantly different computational to statistical gaps.
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关键词
tensor principal component analysis model,statistical limits,spiked random matrices,stochastic block model,sum-of-squares,spiked tensor models,hypergraphs,community detection
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