Bayesian group latent factor analysis with structured sparsity
Shiwen Zhao, Chuan Gao, Sayan Mukherjee, Barbara E Engelhardt

TL;DR
This paper introduces a structured Bayesian group factor analysis model that effectively captures complex, high-dimensional relationships across multiple datasets, enabling flexible sparsity and variance recovery with scalable inference.
Contribution
It develops a novel structured Bayesian prior for joint factor loadings, allowing element-wise and column-wise shrinkage, improving high-dimensional data analysis.
Findings
Successfully recovers sparse signals amidst dense effects
Scales efficiently to large datasets
Flexible regularization for diverse sparsity and variance levels
Abstract
Latent factor models are the canonical statistical tool for exploratory analyses of low-dimensional linear structure for an observation matrix with p features across n samples. We develop a structured Bayesian group factor analysis model that extends the factor model to multiple coupled observation matrices; in the case of two observations, this reduces to a Bayesian model of canonical correlation analysis. The main contribution of this work is to carefully define a structured Bayesian prior that encourages both element-wise and column-wise shrinkage and leads to desirable behavior on high-dimensional data. In particular, our model puts a structured prior on the joint factor loading matrix, regularizing at three levels, which enables element-wise sparsity and unsupervised recovery of latent factors corresponding to structured variance across arbitrary subsets of the observations. In…
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Taxonomy
TopicsGene expression and cancer classification · Statistical Methods and Inference · Bayesian Methods and Mixture Models
