Hypergraph Artificial Benchmark for Community Detection (h–ABCD)

Author:

Kamiński Bogumił1,Prałat Paweł2,Théberge François3

Affiliation:

1. Decision Analysis and Support Unit, SGH Warsaw School of Economics , Warsaw, Poland

2. Department of Mathematics, Toronto Metropolitan University , Toronto, ON M5B 2K3, Canada

3. Tutte Institute for Mathematics and Computing , Ottawa, ON K1G 3Z4, Canada

Abstract

Abstract The Artificial Benchmark for Community Detection (ABCD) graph is a recently introduced random graph model with community structure and power-law distribution for both degrees and community sizes. The model generates graphs with similar properties as the well-known Lancichinetti, Fortunato, Radicchi (LFR) one, and its main parameter ξ can be tuned to mimic its counterpart in the LFR model, the mixing parameter μ. In this article, we introduce hypergraph counterpart of the ABCD model, h–ABCD, which also produces random hypergraph with distributions of ground-truth community sizes and degrees following power-law. As in the original ABCD, the new model h–ABCD can produce hypergraphs with various levels of noise. More importantly, the model is flexible and can mimic any desired level of homogeneity of hyperedges that fall into one community. As a result, it can be used as a suitable, synthetic playground for analyzing and tuning hypergraph community detection algorithms. [Received on 22 October 2022; editorial decision on 18 July 2023; accepted on 19 July 2023]

Funder

Polish National Agency

Publisher

Oxford University Press (OUP)

Subject

Applied Mathematics,Computational Mathematics,Control and Optimization,Management Science and Operations Research,Computer Networks and Communications

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