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Identifiability and inference of non-parametric rates-across-sites models on large-scale phylogenies (1108.0129v1)

Published 31 Jul 2011 in math.PR, cs.CE, cs.DS, math.ST, q-bio.PE, and stat.TH

Abstract: Mutation rate variation across loci is well known to cause difficulties, notably identifiability issues, in the reconstruction of evolutionary trees from molecular sequences. Here we introduce a new approach for estimating general rates-across-sites models. Our results imply, in particular, that large phylogenies are typically identifiable under rate variation. We also derive sequence-length requirements for high-probability reconstruction. Our main contribution is a novel algorithm that clusters sites according to their mutation rate. Following this site clustering step, standard reconstruction techniques can be used to recover the phylogeny. Our results rely on a basic insight: that, for large trees, certain site statistics experience concentration-of-measure phenomena.

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