
TL;DR
This paper introduces an empirical Bayesian matrix decomposition method for linked matrices, enabling flexible, efficient, and accurate extraction of shared and specific signals across multiple data matrices, with applications in biomedical research.
Contribution
It proposes a novel variational Bayesian approach that handles bidimensional integration, missing data, and provides theoretical guarantees for unique decomposition.
Findings
Performs well in simulations for low-rank signal recovery
Accurately decomposes shared and specific signals in linked matrices
Outperforms existing methods in missing data imputation in biomedical data
Abstract
Data for several applications in diverse fields can be represented as multiple matrices that are linked across rows or columns. This is particularly common in molecular biomedical research, in which multiple molecular "omics" technologies may capture different feature sets (e.g., corresponding to rows in a matrix) and/or different sample populations (corresponding to columns). This has motivated a large body of work on integrative matrix factorization approaches that identify and decompose low-dimensional signal that is shared across multiple matrices or specific to a given matrix. We propose an empirical variational Bayesian approach to this problem that has several advantages over existing techniques, including the flexibility to accommodate shared signal over any number of row or column sets (i.e., bidimensional integration), an intuitive model-based objective function that yields…
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