PhyloGen: Language Model-Enhanced Phylogenetic Inference via Graph Structure Generation

Bibliographic Details
Title: PhyloGen: Language Model-Enhanced Phylogenetic Inference via Graph Structure Generation
Authors: Duan, ChenRui, Zang, Zelin, Li, Siyuan, Xu, Yongjie, Li, Stan Z.
Publication Year: 2024
Collection: Computer Science
Quantitative Biology
Subject Terms: Quantitative Biology - Populations and Evolution, Computer Science - Artificial Intelligence
More Details: Phylogenetic trees elucidate evolutionary relationships among species, but phylogenetic inference remains challenging due to the complexity of combining continuous (branch lengths) and discrete parameters (tree topology). Traditional Markov Chain Monte Carlo methods face slow convergence and computational burdens. Existing Variational Inference methods, which require pre-generated topologies and typically treat tree structures and branch lengths independently, may overlook critical sequence features, limiting their accuracy and flexibility. We propose PhyloGen, a novel method leveraging a pre-trained genomic language model to generate and optimize phylogenetic trees without dependence on evolutionary models or aligned sequence constraints. PhyloGen views phylogenetic inference as a conditionally constrained tree structure generation problem, jointly optimizing tree topology and branch lengths through three core modules: (i) Feature Extraction, (ii) PhyloTree Construction, and (iii) PhyloTree Structure Modeling. Meanwhile, we introduce a Scoring Function to guide the model towards a more stable gradient descent. We demonstrate the effectiveness and robustness of PhyloGen on eight real-world benchmark datasets. Visualization results confirm PhyloGen provides deeper insights into phylogenetic relationships.
Document Type: Working Paper
Access URL: http://arxiv.org/abs/2412.18827
Accession Number: edsarx.2412.18827
Database: arXiv
More Details
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