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Main Authors: Zhang, Jiawei, Chen, Yibo, Zhou, Yang, Huang, Jun-Han
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.00468
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author Zhang, Jiawei
Chen, Yibo
Zhou, Yang
Huang, Jun-Han
author_facet Zhang, Jiawei
Chen, Yibo
Zhou, Yang
Huang, Jun-Han
contents The maximum parsimony phylogenetic tree reconstruction problem is NP-hard, presenting a computational bottleneck for classical computing and motivating the exploration of emerging paradigms like quantum computing. To this end, we design three optimization models compatible with both classical and quantum solvers. Our method directly searches the complete solution space of all possible tree topologies and ancestral states, thereby avoiding the potential biases associated with pre-constructing candidate internal nodes. Among these models, the branch-based model drastically reduces the number of variables and explicit constraints through a specific variable definition, providing a novel modeling approach effective not only for phylogenetic tree building but also for other tree problems. The correctness of this model is validated with a classical solver, which obtains solutions that are generally better than those from heuristics on the GAPDH gene dataset. Moreover, our quantum simulations successfully find the exact optimal solutions for small-scale instances with rapid convergence, highlighting the potential of quantum computing to offer a new avenue for solving these intractable problems in evolutionary biology.
format Preprint
id arxiv_https___arxiv_org_abs_2508_00468
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Inference of maximum parsimony phylogenetic trees with model-based classical and quantum methods
Zhang, Jiawei
Chen, Yibo
Zhou, Yang
Huang, Jun-Han
Quantum Physics
The maximum parsimony phylogenetic tree reconstruction problem is NP-hard, presenting a computational bottleneck for classical computing and motivating the exploration of emerging paradigms like quantum computing. To this end, we design three optimization models compatible with both classical and quantum solvers. Our method directly searches the complete solution space of all possible tree topologies and ancestral states, thereby avoiding the potential biases associated with pre-constructing candidate internal nodes. Among these models, the branch-based model drastically reduces the number of variables and explicit constraints through a specific variable definition, providing a novel modeling approach effective not only for phylogenetic tree building but also for other tree problems. The correctness of this model is validated with a classical solver, which obtains solutions that are generally better than those from heuristics on the GAPDH gene dataset. Moreover, our quantum simulations successfully find the exact optimal solutions for small-scale instances with rapid convergence, highlighting the potential of quantum computing to offer a new avenue for solving these intractable problems in evolutionary biology.
title Inference of maximum parsimony phylogenetic trees with model-based classical and quantum methods
topic Quantum Physics
url https://arxiv.org/abs/2508.00468