Nonparanormal Belief Propagation (NPNBP)

Abstract

The empirical success of the belief propagation approximate inference algorithm has inspired numerous theoretical and algorithmic advances. Yet, for continuous non-Gaussian domains performing belief propagation remains a challenging task: recent innovations such as nonparametric or kernel belief propagation, while useful, come with a substantial computational cost and offer little theoretical guarantees, even for tree structured models. In this work we present Nonparanormal BP for performing efficient inference on distributions parameterized by a Gaussian copulas network and any univariate marginals. For tree structured networks, our approach is guaranteed to be exact for this powerful class of non-Gaussian models. Importantly, the method is as efficient as standard Gaussian BP, and its convergence properties do not depend on the complexity of the univariate marginals, even when a nonparametric representation is used.

Cite

Text

Elidan and Cario. "Nonparanormal Belief Propagation (NPNBP)." Neural Information Processing Systems, 2012.

Markdown

[Elidan and Cario. "Nonparanormal Belief Propagation (NPNBP)." Neural Information Processing Systems, 2012.](https://mlanthology.org/neurips/2012/elidan2012neurips-nonparanormal/)

BibTeX

@inproceedings{elidan2012neurips-nonparanormal,
  title     = {{Nonparanormal Belief Propagation (NPNBP)}},
  author    = {Elidan, Gal and Cario, Cobi},
  booktitle = {Neural Information Processing Systems},
  year      = {2012},
  pages     = {899-907},
  url       = {https://mlanthology.org/neurips/2012/elidan2012neurips-nonparanormal/}
}