Proportion-based normalizations outperform compositional data transformations in machine learning applications.
Aaron M YerkeDaisy Fry BrumitAnthony A FodorPublished in: Microbiome (2024)
Our results suggest that minimizing the complexity of transformations while correcting for read depth may be a generally preferable strategy in preparing data for machine learning compared to more sophisticated, but more complex, transformations that attempt to better correct for compositionality. Video Abstract.