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MolEvolve: LLM-Guided Evolutionary Search for Interpretable Molecular Optimization

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Despite deep learning's success in chemistry, its impact is hindered by a lack of interpretability and an inability to resolve activity cliffs, where minor structural nuances trigger drastic property shifts. Current representation learning, bound by the similarity principle, often fails to capture these structural-activity discontinuities. To address this, we introduce MolEvolve, an evolutionary framework that reformulates molecular discovery as an autonomous, look-ahead planning problem. Unlike traditional methods that depend on human-engineered features or rigid prior knowledge, MolEvolve leverages a Large Language Model (LLM) to actively explore and evolve a library of executable chemical symbolic operations. By utilizing the LLM to cold start and an Monte Carlo Tree Search (MCTS) engine for test-time planning with external tools (e.g. RDKit), the system self-discovers optimal trajectories autonomously. This process evolves transparent reasoning chains that translate complex structural transformations into actionable, human-readable chemical insights. Experimental results demonstrate that MolEvolve's autonomous search not only evolves transparent, human-readable chemical insights, but also outperforms baselines in both property prediction and molecule optimization tasks.

Xiangsen Chen, Ruilong Wu, Yanyan Lan, Ting Ma, Yang Liu• 2026

Related benchmarks

TaskDatasetResultRank
Molecular Property ClassificationMoleculeNet BBBP
ROC AUC74.61
56
Molecular property predictionBACE
ROC-AUC78.75
55
RegressionMoleculeNet Lipophilicity
RMSE0.8055
21
Molecular property predictionMoleculeNet ESOL
RMSE0.6869
15
Molecular property predictionHIV MoleculeNet
ROC-AUC76.82
14
Molecular Property OptimizationChemCoT-Bench
LogP Delta1.271
9
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