Geometric Representations of Random Hypergraphs [article]

Simón Lunagómez, Sayan Mukherjee, Robert L. Wolpert, Edoardo M. Airoldi
2015 arXiv   pre-print
A parametrization of hypergraphs based on the geometry of points in R^d is developed. Informative prior distributions on hypergraphs are induced through this parametrization by priors on point configurations via spatial processes. This prior specification is used to infer conditional independence models or Markov structure of multivariate distributions. Specifically, we can recover both the junction tree factorization as well as the hyper Markov law. This approach offers greater control on the
more » ... istribution of graph features than Erdös-Rényi random graphs, supports inference of factorizations that cannot be retrieved by a graph alone, and leads to new Metropolis Hastings Markov chain Monte Carlo algorithms with both local and global moves in graph space. We illustrate the utility of this parametrization and prior specification using simulations.
arXiv:0912.3648v3 fatcat:2k2owzsmbndmjm3x4flnpclrda