Molecular Property Prediction


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

SPECTRA: Spectral Target-Aware Graph Augmentation for Imbalanced Molecular Property Regression

Add code
Nov 06, 2025
Viaarxiv icon

Leveraging Classical Algorithms for Graph Neural Networks

Add code
Oct 24, 2025
Viaarxiv icon

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

Add code
Oct 16, 2025
Viaarxiv icon

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

Add code
Oct 08, 2025
Viaarxiv icon

Transformers Discover Molecular Structure Without Graph Priors

Add code
Oct 02, 2025
Figure 1 for Transformers Discover Molecular Structure Without Graph Priors
Figure 2 for Transformers Discover Molecular Structure Without Graph Priors
Figure 3 for Transformers Discover Molecular Structure Without Graph Priors
Figure 4 for Transformers Discover Molecular Structure Without Graph Priors
Viaarxiv icon

MMM: Quantum-Chemical Molecular Representation Learning for Combinatorial Drug Recommendation

Add code
Oct 09, 2025
Viaarxiv icon

Learning the Neighborhood: Contrast-Free Multimodal Self-Supervised Molecular Graph Pretraining

Add code
Sep 26, 2025
Viaarxiv icon

Functional Groups are All you Need for Chemically Interpretable Molecular Property Prediction

Add code
Sep 11, 2025
Viaarxiv icon

GeoGraph: Geometric and Graph-based Ensemble Descriptors for Intrinsically Disordered Proteins

Add code
Oct 01, 2025
Viaarxiv icon

A Survey of Graph Neural Networks for Drug Discovery: Recent Developments and Challenges

Add code
Sep 09, 2025
Viaarxiv icon