English

The HyperKron Graph Model for higher-order features

Social and Information Networks 2018-09-11 v1 Physics and Society

Abstract

Graph models have long been used in lieu of real data which can be expensive and hard to come by. A common class of models constructs a matrix of probabilities, and samples an adjacency matrix by flipping a weighted coin for each entry. Examples include the Erd\H{o}s-R\'{e}nyi model, Chung-Lu model, and the Kronecker model. Here we present the HyperKron Graph model: an extension of the Kronecker Model, but with a distribution over hyperedges. We prove that we can efficiently generate graphs from this model in order proportional to the number of edges times a small log-factor, and find that in practice the runtime is linear with respect to the number of edges. We illustrate a number of useful features of the HyperKron model including non-trivial clustering and highly skewed degree distributions. Finally, we fit the HyperKron model to real-world networks, and demonstrate the model's flexibility with a complex application of the HyperKron model to networks with coherent feed-forward loops.

Keywords

Cite

@article{arxiv.1809.03488,
  title  = {The HyperKron Graph Model for higher-order features},
  author = {Nicole Eikmeier and Arjun S. Ramani and David F. Gleich},
  journal= {arXiv preprint arXiv:1809.03488},
  year   = {2018}
}

Comments

17 pages, 9 figures