Robust Hypergraph Clustering via Convex Relaxation of Truncated MLE

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We study hypergraph clustering in the weighted d -uniform hypergraph stochastic block model ( d -WHSBM ), where each edge consisting of d nodes from the same community has higher expected weight than the edges consisting of nodes from different communities. We propose a new hypergraph clustering algorithm, called CRTMLE , and provide its performance guarantee under the d -WHSBM for general parameter regimes. We show that the proposed method achieves the order-wise optimal or the best existing results for approximately balanced community sizes. Moreover, our results settle the first recovery guarantees for growing number of clusters of unbalanced sizes. Involving theoretical analysis and empirical results, we demonstrate the robustness of our algorithm against the unbalancedness of community sizes or the presence of outlier nodes.
Publisher
IEEE
Issue Date
2020-11
Language
English
Citation

IEEE Journal on Selected Areas in Information Theory, v.1, no.3, pp.613 - 631

ISSN
2641-8770
DOI
10.1109/JSAIT.2020.3037170
URI
http://hdl.handle.net/10203/279929
Appears in Collection
EE-Journal Papers(저널논문)
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