Admixed populations in the neighbor-joining algorithm: a geometric analysis with five taxa
Joy Z. Zhang,
Wai Tung ‘Jack’ Lo,
Michael Stillman
et al.
Abstract:The Neighbor-Joining (NJ) algorithm is a widely used method for constructing phylogenetic trees from genetic distances. While NJ is known to perform well with tree-like data, its behavior under admixture remains understudied. In this work, we present a geometric framework for analyzing the NJ algorithm under a linear admixture model. We focus on three key properties related to clustering order, distance, and topological path length in the resulting NJ trees involving five taxa. Our approach leverages polyhedra… Show more
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