2024
DOI: 10.1101/2024.03.23.586420
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Accelerated dimensionality reduction of single-cell RNA sequencing data with fastglmpca

Eric Weine,
Peter Carbonetto,
Matthew Stephens

Abstract: Motivated by theoretical and practical issues that arise when applying Principal Components Analysis (PCA) to count data, Townes et al introduced ''Poisson GLM-PCA'', a variation of PCA adapted to count data, as a tool for dimensionality reduction of single-cell RNA sequencing (RNA-seq) data. However, fitting GLM-PCA is computationally challenging. Here we study this problem, and show that a simple algorithm, which we call ``Alternating Poisson Regression'' (APR), produces better quality fits, and in less time… Show more

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