Bayesian Pyramids: identifiable multilayer discrete latent structure models for discrete data

Author:

Gu Yuqi1,Dunson David B2

Affiliation:

1. Department of Statistics, Columbia University , New York, NY , USA

2. Department of Statistical Science, Duke University , Durham, NC , USA

Abstract

Abstract High-dimensional categorical data are routinely collected in biomedical and social sciences. It is of great importance to build interpretable parsimonious models that perform dimension reduction and uncover meaningful latent structures from such discrete data. Identifiability is a fundamental requirement for valid modeling and inference in such scenarios, yet is challenging to address when there are complex latent structures. In this article, we propose a class of identifiable multilayer (potentially deep) discrete latent structure models for discrete data, termed Bayesian Pyramids. We establish the identifiability of Bayesian Pyramids by developing novel transparent conditions on the pyramid-shaped deep latent directed graph. The proposed identifiability conditions can ensure Bayesian posterior consistency under suitable priors. As an illustration, we consider the two-latent-layer model and propose a Bayesian shrinkage estimation approach. Simulation results for this model corroborate the identifiability and estimatability of model parameters. Applications of the methodology to DNA nucleotide sequence data uncover useful discrete latent features that are highly predictive of sequence types. The proposed framework provides a recipe for interpretable unsupervised learning of discrete data and can be a useful alternative to popular machine learning methods.

Funder

National Science Foundation

National Institutes of Health

European Research Council

Publisher

Oxford University Press (OUP)

Subject

Statistics, Probability and Uncertainty,Statistics and Probability

Reference63 articles.

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2. Learning certifiably optimal rule lists for categorical data;Angelino;The Journal of Machine Learning Research,2017

3. Latent Dirichlet allocation;Blei;Journal of Machine Learning Research,2003

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