A collapsing method for the efficient recovery of optimal edges in phylogenetic trees

Mike Hu, P. Kearney, J. Badger
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引用次数: 1

Abstract

As the amount of sequencing efforts and genomic data volume continue to increase at an accelerated rate, phylogenetic analysis provides an evolutionary context for understanding and interpreting this growing set of complex data. We introduce a novel quartet based method for inferring molecular based phylogeny called hypercleaning* (HC*). The HC* method is based on the hypercleaning (HC) technique, which possesses an interesting property of recovering edges (of a phylogenetic tree) that are best supported by the witness quartet set. HC* extends HC in two regards: i) whereas HC constrains the input quartet set to be unweighted (binary valued), HC* allows any positive valued quartet scores, enabling more informative quartets to be defined. ii) HC* employs a novel collapsing technique which significantly speeds up the inference stage, making it empirically on par with quartet puzzling in terms of speed, while still guaranteeing optimal edge recovery as in HC. This paper is primarily aimed at presenting the algorithmic construction of HC*. We also report some preliminary studies on an implementation of HC* as a potentially powerful approximation scheme for maximum likelihood based inference.
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系统发育树最优边的有效恢复方法
随着测序工作和基因组数据量持续加速增长,系统发育分析为理解和解释这一不断增长的复杂数据集提供了一个进化背景。我们介绍了一种新的基于四重奏的方法来推断基于分子的系统发育,称为超清洗* (HC*)。HC*方法是基于超清洗(HC)技术,它具有一个有趣的特性,即恢复(系统发育树的)最受见证四重奏集支持的边。HC*在两个方面扩展了HC: i)而HC限制输入四重奏集为未加权(二值),HC*允许任何正值四重奏分数,使更多的信息四重奏被定义。ii) HC*采用了一种新颖的坍缩技术,显着加快了推理阶段,使其在速度方面与经验上的四重奏谜题相当,同时仍然保证像HC一样的最佳边缘恢复。本文主要介绍HC*的算法构造。我们还报告了一些关于HC*作为基于最大似然推理的潜在强大近似方案的实现的初步研究。
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