Dependent Multinomial Models Made Easy: Stick-Breaking with the Polya-Gamma Augmentation
Abstract
Many practical modeling problems involve discrete data that are best represented as draws from multinomial or categorical distributions. For example, nucleotides in a DNA sequence, children's names in a given state and year, and text documents are all commonly modeled with multinomial distributions. In all of these cases, we expect some form of dependency between the draws: the nucleotide at one position in the DNA strand may depend on the preceding nucleotides, children's names are highly correlated from year to year, and topics in text may be correlated and dynamic. These dependencies are not naturally captured by the typical Dirichlet-multinomial formulation. Here, we leverage a logistic stick-breaking representation and recent innovations in P\'olya-gamma augmentation to reformulate the multinomial distribution in terms of latent variables with jointly Gaussian likelihoods, enabling us to take advantage of a host of Bayesian inference techniques for Gaussian models with minimal overhead.
Cite
Text
Linderman et al. "Dependent Multinomial Models Made Easy: Stick-Breaking with the Polya-Gamma Augmentation." Neural Information Processing Systems, 2015.Markdown
[Linderman et al. "Dependent Multinomial Models Made Easy: Stick-Breaking with the Polya-Gamma Augmentation." Neural Information Processing Systems, 2015.](https://mlanthology.org/neurips/2015/linderman2015neurips-dependent/)BibTeX
@inproceedings{linderman2015neurips-dependent,
title = {{Dependent Multinomial Models Made Easy: Stick-Breaking with the Polya-Gamma Augmentation}},
author = {Linderman, Scott and Johnson, Matthew J and Adams, Ryan P.},
booktitle = {Neural Information Processing Systems},
year = {2015},
pages = {3456-3464},
url = {https://mlanthology.org/neurips/2015/linderman2015neurips-dependent/}
}