2024
DOI: 10.1101/2024.05.06.592828
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Predicting locus phylogenetic utility using machine learning

Alexander Knyshov,
Alexandra Walling,
Caitlin Guccione
et al.

Abstract: Disentangling evolutionary signal from noise in genomic datasets is essential to building phylogenies. The efficiency of current sequencing platforms and workflows has resulted in a plethora of large-scale phylogenomic datasets where, if signal is weak, it can be easily overwhelmed with non-phylogenetic signal and noise. However, the nature of the latter is not well understood. Although certain factors have been investigated and verified as impacting the accuracy of phylogenetic reconstructions, many others (a… Show more

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