Bayesian inference on quasi-sparse count data

Type: Article

Publication Date: 2016-10-17

Citations: 21

DOI: https://doi.org/10.1093/biomet/asw053

Abstract

There is growing interest in analysing high-dimensional count data, which often exhibit quasi-sparsity corresponding to an overabundance of zeros and small nonzero counts. Existing methods for analysing multivariate count data via Poisson or negative binomial log-linear hierarchical models with zero-inflation cannot flexibly adapt to quasi-sparse settings. We develop a new class of continuous local-global shrinkage priors tailored to quasi-sparse counts. Theoretical properties are assessed, including flexible posterior concentration and stronger control of false discoveries in multiple testing. Simulation studies demonstrate excellent small-sample properties relative to competing methods. We use the method to detect rare mutational hotspots in exome sequencing data and to identify North American cities most impacted by terrorism.

Locations

Similar Works

Action Title Year Authors
+ Inference on High-Dimensional Sparse Count Data 2015 Jyotishka Datta
David B. Dunson
+ Priors for High-Dimensional Sparse Poisson Means 2015 Jyotishka Datta
David B. Dunson
+ Bayesian Penalized Regression and Variable Selection for Zero-Inflated Count Data on Lattice 2013 Robert McnNutt
Catherine L. Kothari
+ PDF Chat Count data models and Bayesian shrinkage priors with real-world data applications 2022 Arinjita Bhattacharyya
Riten Mitra
Shesh Rai
+ Asymptotic Bayes Optiamlity for Sparse Count Data 2024 Sayantan Paul
and Arijit Chakrabarti
+ A Bayesian Zero-Inflated Dirichlet-Multinomial Regression Model for Multivariate Compositional Count Data 2023 Matthew D. Koslovsky
+ PDF Chat A Bayesian zero‐inflated Dirichlet‐multinomial regression model for multivariate compositional count data 2023 Matthew D. Koslovsky
+ PDF Chat A Bayesian Nonparametric Analysis for Zero-Inflated Multivariate Count Data with Application to Microbiome Study 2021 Kurtis Shuler
Samuel Verbanic
Irene A. Chen
Juhee Lee
+ PDF Chat ShrinkBayes: a versatile R-package for analysis of count-based sequencing data in complex study designs 2014 Mark A. van de Wiel
Maarten Neerincx
Tineke E. Buffart
Daoud Sie
Henk M.W. Verheul
+ PDF Chat A bivariate zero-inflated negative binomial model and its applications to biomedical settings 2023 Hunyong Cho
Chengwen Li
John S. Preisser
Di Wu
+ Bayesian latent variable models for hierarchical clustered count outcomes with repeated measures in microbiome studies 2017 Lizhen Xu
Andrew D. Paterson
Wei Xu
+ Semiparametric discrete data regression with Monte Carlo inference and prediction 2021 Daniel R. Kowal
Bohan Wu
+ PDF Chat Zero-inflation in the Multivariate Poisson Lognormal Family 2024 Bastien Batardière
Julien Chiquet
François Gindraud
Mahendra Mariadassou
+ Review of Probability Distributions for Modeling Count Data 2020 F. William Townes
+ Review of Probability Distributions for Modeling Count Data 2020 F. William Townes
+ Weak Signals in High‐Dimensional Poisson Regression Models 2021 Orawan Reangsephet
Supranee Lisawadi
S. Ejaz Ahmed
+ Bayesian Zero-Inflated Negative Binomial Regression Based on Pólya-Gamma Mixtures 2018 Brian Neelon
+ The LZIP: A Bayesian Latent Factor Model for Correlated Zero-Inflated Counts 2016 Brian Neelon
Dongjun Chung
+ PDF Chat Bayesian Shrinkage Priors in Zero-Inflated and Negative Binomial Regression models with Real World Data Applications of COVID-19 Vaccine, and RNA-Seq 2022 Arinjita Bhattacharyya
Riten Mitra
N. Shesh
Subhadip Pal
+ Modern Bayesian Inference in Zero-Inflated Poisson Models 2012 Erlis Ruli
Laura Ventura