bioconductor-scry
Small-Count Analysis Methods for High-Dimensional Data
Small-Count Analysis Methods for High-Dimensional Data
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Many modern biological datasets consist of small counts that are not well fit by standard linear-Gaussian methods such as principal component analysis. This package provides implementations of count-based feature selection and dimension reduction algorithms. These methods can be used to facilitate unsupervised analysis of any high-dimensional data such as single-cell RNA-seq.
Summary
Small-Count Analysis Methods for High-Dimensional Data
Last Updated
Jan 4, 2025 at 18:42
License
Artistic-2.0
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18.7K
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