English

A Stochastic Local Search algorithm for distance-based phylogeny reconstruction

Populations and Evolution 2010-02-08 v1

Abstract

In many interesting cases the reconstruction of a correct phylogeny is blurred by high mutation rates and/or horizontal transfer events. As a consequence a divergence arises between the true evolutionary distances and the differences between pairs of taxa as inferred from available data, making the phylogenetic reconstruction a challenging problem. Mathematically this divergence translates in a loss of additivity of the actual distances between taxa. In distance-based reconstruction methods, two properties of additive distances were extensively exploited as antagonist criteria to drive phylogeny reconstruction: on the one hand a local property of quartets, i.e., sets of four taxa in a tree, the four-points condition; on the other hand a recently proposed formula that allows to write the tree length as a function of the distances between taxa, the Pauplin's formula. Here we introduce a new reconstruction scheme, that exploits in a unified framework both the four-points condition and the Pauplin's formula. We propose, in particular, a new general class of distance-based Stochastic Local Search algorithms, which reduces in a limit case to the minimization of the Pauplin's length. When tested on artificially generated phylogenies our Stochastic Big-Quartet Swapping algorithmic scheme significantly outperforms state-of-art distance-based algorithms in cases of deviation from additivity due to high rate of back mutations. A significant improvement is also observed with respect to the state-of-art algorithms in case of high rate of horizontal transfer.

Keywords

Cite

@article{arxiv.1002.1100,
  title  = {A Stochastic Local Search algorithm for distance-based phylogeny reconstruction},
  author = {F. Tria and E. Caglioti and V. Loreto and A. Pagnani},
  journal= {arXiv preprint arXiv:1002.1100},
  year   = {2010}
}

Comments

13 pages, 8 figures

R2 v1 2026-06-21T14:43:36.447Z