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Improved Fixed-parameter Algorithm for the Tree Containment Problem on Unrooted Phylogenetic Network.

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Phylogenetic trees are unable to represent the evolutionary process for a collection of species if reticulation events happened, and a generalized model named phylogenetic network was introduced consequently. However, the… Click to show full abstract

Phylogenetic trees are unable to represent the evolutionary process for a collection of species if reticulation events happened, and a generalized model named phylogenetic network was introduced consequently. However, the representation of the evolutionary process for one gene is actually a phylogenetic tree that is '`contained'' in the phylogenetic network for the considered species containing the gene. Thus a fundamental computational problem named Tree Containment problem arises, which asks whether a phylogenetic tree is contained in a phylogenetic network. The previous research on the problem mainly focused on its rooted version of which the considered tree and network are rooted, and several algorithms were proposed when the considered network is binary or structure-restricted. There is almost no algorithm for its unrooted version except the recent fixed-parameter algorithm with runtime O(4kn2), where k and n are the reticulation number and size of the considered unrooted binary phylogenetic network N, respectively. As the runtime is a little expensive when considering big values of k, we aim to improve it and successfully propose a fixed-parameter algorithm with runtime O(2.594kn2) in the paper. Additionally, we experimentally show its effectiveness on biological data and simulated data.

Keywords: parameter algorithm; problem; fixed parameter; phylogenetic network; network

Journal Title: IEEE/ACM transactions on computational biology and bioinformatics
Year Published: 2021

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