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MultiCOAP (version 1.1)

High-Dimensional Covariate-Augmented Overdispersed Multi-Study Poisson Factor Model

Description

We introduce factor models designed to jointly analyze high-dimensional count data from multiple studies by extracting study-shared and specified factors. Our factor models account for heterogeneous noises and overdispersion among counts with augmented covariates. We propose an efficient and speedy variational estimation procedure for estimating model parameters, along with a novel criterion for selecting the optimal number of factors and the rank of regression coefficient matrix. More details can be referred to Liu et al. (2024) .

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install.packages('MultiCOAP')

Monthly Downloads

142

Version

1.1

License

GPL-3

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Maintainer

Wei Liu

Last Published

March 7th, 2024

Functions in MultiCOAP (1.1)

gendata_simu_multi2

Generate simulated data
MultiCOAP

Fit the multi-study covariate-augmented overdispersed Poisson factor model via variational inference
MSFRVI

Fit the multi-study covariate-augmented linear factor model via variational inference