Non‐linear phylogenetic regression using regularised kernels

Author:

Rosas‐Puchuri Ulises1ORCID,Santaquiteria Aintzane1,Khanmohammadi Sina23,Solís‐Lemus Claudia4ORCID,Betancur‐R Ricardo15

Affiliation:

1. School of Biological Sciences The University of Oklahoma Norman Oklahoma USA

2. School of Computer Science The University of Oklahoma Norman Oklahoma USA

3. Data Science and Analytics Institute, The University of Oklahoma Norman Oklahoma USA

4. Wisconsin Institute for Discovery, Department of Plant Pathology University of Wisconsin‐Madison Madison Wisconsin USA

5. Scripps Institution of Oceanography University of California San Diego La Jolla California USA

Abstract

Abstract Phylogenetic regression is a type of generalised least squares (GLS) method that incorporates a modelled covariance matrix based on the evolutionary relationships between species (i.e. phylogenetic relationships). While this method has found widespread use in hypothesis testing via phylogenetic comparative methods, such as phylogenetic ANOVA, its ability to account for non‐linear relationships has received little attention. To address this, here we implement a phylogenetic Kernel Ridge Regression (phyloKRR) method that utilises GLS in a high‐dimensional feature space, employing linear combinations of phylogenetically weighted data to account for non‐linearity. We analysed two biological datasets using the Radial Basis Function and linear kernel function. The first dataset contained morphometric data, while the second dataset comprised discrete trait data and diversification rates as response variable. Hyperparameter tuning of the model was achieved through cross‐validation rounds in the training set. In the tested biological datasets, phyloKRR reduced the error rate (as measured by RMSE) by around 20% compared to linear‐based regression when data did not exhibit linear relationships. In simulated datasets, the error rate decreased almost exponentially with the level of non‐linearity. These results show that introducing kernels into phylogenetic regression analysis presents a novel and promising tool for complementing phylogenetic comparative methods. We have integrated this method into Python package named phyloKRR, which is freely available at: https://github.com/ulises‐rosas/phylokrr.

Funder

Division of Environmental Biology

Publisher

Wiley

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