Projected Gradient Descent Method for Tropical Principal Component Analysis over Tree Space
Projected Gradient Descent Method for Tropical Principal Component Analysis over Tree Space
In 2019, Yoshida et al. developed tropical Principal Component Analysis (PCA), that is, an analogue of the classical PCA in the setting of tropical geometry and applied it to visualize a set of gene trees over a space of phylogenetic trees which is an union of lower dimensional polyhedral cones in an Euclidean space with its dimension $m(m-1)/2$ where $m$ is the number of leaves. In this paper, we introduce a projected gradient descent method to estimate the tropical principal polytope over the space of phylogenetic trees and we apply it to apicomplexa dataset. With computational experiment against MCMC samplers, we show that our projected gradient descent works very well.
Ruriko Yoshida
数学生物科学研究方法、生物科学研究技术
Ruriko Yoshida.Projected Gradient Descent Method for Tropical Principal Component Analysis over Tree Space[EB/OL].(2025-04-15)[2025-05-02].https://arxiv.org/abs/2504.11201.点此复制
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