Molecular Property Prediction


Molecular property prediction is the process of predicting the properties of molecules using machine-learning models.

Spectral Analysis of Molecular Kernels: When Richer Features Do Not Guarantee Better Generalization

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Oct 16, 2025
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Unified Molecule Pre-training with Flexible 2D and 3D Modalities: Single and Paired Modality Integration

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Oct 08, 2025
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MMM: Quantum-Chemical Molecular Representation Learning for Combinatorial Drug Recommendation

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Oct 09, 2025
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Transformers Discover Molecular Structure Without Graph Priors

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Oct 02, 2025
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Learning the Neighborhood: Contrast-Free Multimodal Self-Supervised Molecular Graph Pretraining

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Sep 26, 2025
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GeoGraph: Geometric and Graph-based Ensemble Descriptors for Intrinsically Disordered Proteins

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Oct 01, 2025
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Functional Groups are All you Need for Chemically Interpretable Molecular Property Prediction

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Sep 11, 2025
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A Survey of Graph Neural Networks for Drug Discovery: Recent Developments and Challenges

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Sep 09, 2025
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An Equivariant Graph Network for Interpretable Nanoporous Materials Design

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Sep 19, 2025
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Monte Carlo Tree Diffusion with Multiple Experts for Protein Design

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Sep 19, 2025
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