Tropical Geometry of Phylogenetic Tree Space: A Statistical Perspective
Anthea Monod, Bo Lin, Ruriko Yoshida, and Qiwen Kang

TL;DR
This paper investigates the use of tropical geometry to model phylogenetic tree space, enabling new statistical and machine learning methods with improved efficiency and performance.
Contribution
It introduces a tropical geometric framework for phylogenetic trees, demonstrating its theoretical properties and practical advantages over existing methods.
Findings
Tropical geometric space has desirable analytic and topological properties.
The approach improves computational efficiency in phylogenetic analysis.
Real data example shows enhanced statistical performance.
Abstract
Phylogenetic trees are the fundamental mathematical representation of evolutionary processes in biology. They are also objects of interest in pure mathematics, such as algebraic geometry and combinatorics, due to their discrete geometry. Although they are important data structures, they face the significant challenge that sets of trees form a non-Euclidean phylogenetic tree space, which means that standard computational and statistical methods cannot be directly applied. In this work, we explore the statistical feasibility of a pure mathematical representation of the set of all phylogenetic trees based on tropical geometry for both descriptive and inferential statistics, and unsupervised and supervised machine learning. Our exploration is both theoretical and practical. We show that the tropical geometric phylogenetic tree space endowed with a generalized Hilbert projective metric…
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Taxonomy
TopicsMorphological variations and asymmetry · Ecology and Vegetation Dynamics Studies
