2022
DOI: 10.1111/rssb.12547
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Exact Clustering in Tensor Block Model: Statistical Optimality and Computational Limit

Abstract: High‐order clustering aims to identify heterogeneous substructures in multiway datasets that arise commonly in neuroimaging, genomics, social network studies, etc. The non‐convex and discontinuous nature of this problem pose significant challenges in both statistics and computation. In this paper, we propose a tensor block model and the computationally efficient methods, high‐order Lloyd algorithm (HLloyd), and high‐order spectral clustering (HSC), for high‐order clustering. The convergence guarantees and stat… Show more

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Cited by 14 publications
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References 54 publications
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