Variational Combinatorial Sequential Monte Carlo for Bayesian Phylogenetics in Hyperbolic Space
Variational Combinatorial Sequential Monte Carlo for Bayesian Phylogenetics in Hyperbolic Space
Hyperbolic space naturally encodes hierarchical structures such as phylogenies (binary trees), where inward-bending geodesics reflect paths through least common ancestors, and the exponential growth of neighborhoods mirrors the super-exponential scaling of topologies. This scaling challenge limits the efficiency of Euclidean-based approximate inference methods. Motivated by the geometric connections between trees and hyperbolic space, we develop novel hyperbolic extensions of two sequential search algorithms: Combinatorial and Nested Combinatorial Sequential Monte Carlo (\textsc{Csmc} and \textsc{Ncsmc}). Our approach introduces consistent and unbiased estimators, along with variational inference methods (\textsc{H-Vcsmc} and \textsc{H-Vncsmc}), which outperform their Euclidean counterparts. Empirical results demonstrate improved speed, scalability and performance in high-dimensional phylogenetic inference tasks.
Alex Chen、Philipe Chlenski、Kenneth Munyuza、Antonio Khalil Moretti、Christian A. Naesseth、Itsik Pe'er
生物科学研究方法、生物科学研究技术
Alex Chen,Philipe Chlenski,Kenneth Munyuza,Antonio Khalil Moretti,Christian A. Naesseth,Itsik Pe'er.Variational Combinatorial Sequential Monte Carlo for Bayesian Phylogenetics in Hyperbolic Space[EB/OL].(2025-07-15)[2025-08-16].https://arxiv.org/abs/2501.17965.点此复制
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