Section 01
ICML 2026 Groundbreaking Research: Nested Birth-Death Processes Challenge the Dominance of Neural Networks in Protein Evolution Modeling
A study accepted by ICML 2026 shows via its open-source implementation that nested birth-death processes in traditional probabilistic models can compete with deep learning in time-series modeling of protein evolution. This research challenges the dominance of neural networks in this field and provides a new perspective for computational biology. Its open-source code is maintained by Annabel Large (GitHub link: https://github.com/AnnabelLarge/protein_evolution_icml_2026) and was released on 2026-05-29. Core advantages include higher computational efficiency and stronger interpretability, among others.