Graphical Models via Generalized Linear Models
Abstract
Undirected graphical models, or Markov networks, such as Gaussian graphical models and Ising models enjoy popularity in a variety of applications. In many settings, however, data may not follow a Gaussian or binomial distribution assumed by these models. We introduce a new class of graphical models based on generalized linear models (GLM) by assuming that node-wise conditional distributions arise from exponential families. Our models allow one to estimate networks for a wide class of exponential distributions, such as the Poisson, negative binomial, and exponential, by fitting penalized GLMs to select the neighborhood for each node. A major contribution of this paper is the rigorous statistical analysis showing that with high probability, the neighborhood of our graphical models can be recovered exactly. We provide examples of high-throughput genomic networks learned via our GLM graphical models for multinomial and Poisson distributed data.
Cite
Text
Yang et al. "Graphical Models via Generalized Linear Models." Neural Information Processing Systems, 2012.Markdown
[Yang et al. "Graphical Models via Generalized Linear Models." Neural Information Processing Systems, 2012.](https://mlanthology.org/neurips/2012/yang2012neurips-graphical/)BibTeX
@inproceedings{yang2012neurips-graphical,
title = {{Graphical Models via Generalized Linear Models}},
author = {Yang, Eunho and Allen, Genevera and Liu, Zhandong and Ravikumar, Pradeep K.},
booktitle = {Neural Information Processing Systems},
year = {2012},
pages = {1358-1366},
url = {https://mlanthology.org/neurips/2012/yang2012neurips-graphical/}
}