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Sparse Bayesian Group Factor Model for Feature Interactions in Multiple Count Tables Data

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Taylor & Francis Group2025-02-25 更新2026-04-16 收录
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https://tandf.figshare.com/articles/dataset/Sparse_Bayesian_Group_Factor_Model_for_Feature_Interactions_in_Multiple_Count_Tables_Data/28195140/1
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资源简介:
Group factor models have been developed to infer relationships between multiple co-occurring multivariate continuous responses. Motivated by complex count data from multi-domain microbiome studies using next-generation sequencing, we develop a sparse Bayesian group factor model (Sp-BGFM) for multiple count table data that captures the interaction between microorganisms in different domains. Sp-BGFM uses a rounded kernel mixture model using a Dirichlet process (DP) prior with log-normal mixture kernels for count vectors. A group factor model is used to model the covariance matrix of the mixing kernel that describes microorganism interaction. We construct a Dirichlet-Horseshoe (Dir-HS) shrinkage prior and use it as a joint prior for factor loading vectors. Joint sparsity induced by a Dir-HS prior greatly improves the performance in high-dimensional applications. We further model the effects of covariates on microbial abundances using regression. The semiparametric model flexibly accommodates large variability in observed counts and excess zero counts and provides a basis for robust estimation of the interaction and covariate effects. We evaluate Sp-BGFM using simulation studies and real data analysis, comparing it to popular alternatives. Our results highlight the necessity of joint sparsity induced by the Dir-HS prior, and the benefits of a flexible DP model for baseline abundances. Supplementary materials for this article are available online, including a standardized description of the materials available for reproducing the work.
提供机构:
Zhang, Shuangjie; Chen, Irene A.; Shen, Yuning; Lee, Juhee
创建时间:
2025-01-13
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