Circular Networks from Distorted Metrics
Sebastien Roch, Kun-Chieh Wang

TL;DR
This paper introduces a novel, efficient method for reconstructing circular networks from distorted metrics, improving robustness in representing complex evolutionary relationships beyond trees.
Contribution
It presents the first circular network reconstruction approach based on distorted metrics, addressing issues of error sensitivity in existing methods.
Findings
The new method is computationally efficient.
Analysis reveals the importance of maximum incompatibility.
It enhances robustness in network reconstruction from genetic data.
Abstract
Trees have long been used as a graphical representation of species relationships. However complex evolutionary events, such as genetic reassortments or hybrid speciations which occur commonly in viruses, bacteria and plants, do not fit into this elementary framework. Alternatively, various network representations have been developed. Circular networks are a natural generalization of leaf-labeled trees interpreted as split systems, that is, collections of bipartitions over leaf labels corresponding to current species. Although such networks do not explicitly model specific evolutionary events of interest, their straightforward visualization and fast reconstruction have made them a popular exploratory tool to detect network-like evolution in genetic datasets. Standard reconstruction methods for circular networks, such as Neighbor-Net, rely on an associated metric on the species set.…
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Taxonomy
TopicsGenomics and Phylogenetic Studies · Plant and animal studies · Genetic diversity and population structure
