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Fast Local Search for Unrooted Robinson-Foulds Supertrees

机译:快速本地搜索无根Robinson-Foulds超级树

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摘要

A Robinson-Foulds (RF) supertree for a collection of input trees is a tree containing all the species in the input trees that is at minimum total RF distance to the input trees. Thus, an RF supertree is consistent with the maximum number of splits in the input trees. Constructing RF supertrees for rooted and unrooted data is NP-hard. Nevertheless, effective local search heuristics have been developed for the restricted case where the input trees and the supertree are rooted. We describe new heuristics, based on the Edge Contract and Refine (ECR) operation, that remove this restriction, thereby expanding the utility of RF supertrees. Our experimental results on simulated and empirical data sets show that our unrooted local search algorithms yield better supertrees than those obtained from MRP and rooted RF heuristics in terms of total RF distance to the input trees and, for simulated data, in terms of RF distance to the true tree.
机译:用于输入树集合的Robinson-Foulds(RF)超级树是一棵包含输入树中所有物种的树,该树与输入树之间的总RF距离最小。因此,RF超级树与输入树中最大拆分数目一致。为有根和无根数据构造RF超级树是NP难的。然而,对于输入树和父树都植根的受限情况,已经开发了有效的本地搜索启发式方法。我们基于边缘契约和优化(ECR)操作描述了新的启发式方法,该方法消除了此限制,从而扩展了RF超树的实用性。我们在模拟和经验数据集上的实验结果表明,就输入树的总RF距离而言,无根本地搜索算法产生的超级树比从MRP和根RF启发式算法获得的超级树更好;对于模拟数据,从真正的树。

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