Completely Random Measures for Modelling Block-Structured Sparse Networks
Abstract
Statistical methods for network data often parameterize the edge-probability by attributing latent traits such as block structure to the vertices and assume exchangeability in the sense of the Aldous-Hoover representation theorem. These assumptions are however incompatible with traits found in real-world networks such as a power-law degree-distribution. Recently, Caron & Fox (2014) proposed the use of a different notion of exchangeability after Kallenberg (2005) and obtained a network model which permits edge-inhomogeneity, such as a power-law degree-distribution whilst retaining desirable statistical properties. However, this model does not capture latent vertex traits such as block-structure. In this work we re-introduce the use of block-structure for network models obeying Kallenberg’s notion of exchangeability and thereby obtain a collapsed model which both admits the inference of block-structure and edge inhomogeneity. We derive a simple expression for the likelihood and an efficient sampling method. The obtained model is not significantly more difficult to implement than existing approaches to block-modelling and performs well on real network datasets.
Cite
Text
Herlau et al. "Completely Random Measures for Modelling Block-Structured Sparse Networks." Neural Information Processing Systems, 2016.Markdown
[Herlau et al. "Completely Random Measures for Modelling Block-Structured Sparse Networks." Neural Information Processing Systems, 2016.](https://mlanthology.org/neurips/2016/herlau2016neurips-completely/)BibTeX
@inproceedings{herlau2016neurips-completely,
title = {{Completely Random Measures for Modelling Block-Structured Sparse Networks}},
author = {Herlau, Tue and Schmidt, Mikkel N and Mørup, Morten},
booktitle = {Neural Information Processing Systems},
year = {2016},
pages = {4260-4268},
url = {https://mlanthology.org/neurips/2016/herlau2016neurips-completely/}
}