Molecular Property Prediction


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

Scaffold-Conditioned Preference Triplets for Controllable Molecular Optimization with Large Language Models

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Apr 14, 2026
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When Does Context Help? A Systematic Study of Target-Conditional Molecular Property Prediction

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Apr 08, 2026
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ReadMOF: Structure-Free Semantic Embeddings from Systematic MOF Nomenclature for Machine Learning

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Apr 12, 2026
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BiScale-GTR: Fragment-Aware Graph Transformers for Multi-Scale Molecular Representation Learning

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Apr 07, 2026
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ToxReason: A Benchmark for Mechanistic Chemical Toxicity Reasoning via Adverse Outcome Pathway

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Apr 07, 2026
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Transferable FB-GNN-MBE Framework for Potential Energy Surfaces: Data-Adaptive Transfer Learning in Deep Learned Many-Body Expansion Theory

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Apr 10, 2026
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MolDA: Molecular Understanding and Generation via Large Language Diffusion Model

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Apr 07, 2026
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PolyJarvis: LLM Agent for Autonomous Polymer MD Simulations

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Apr 02, 2026
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In-Context Molecular Property Prediction with LLMs: A Blinding Study on Memorization and Knowledge Conflicts

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Mar 26, 2026
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KMM-CP: Practical Conformal Prediction under Covariate Shift via Selective Kernel Mean Matching

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Mar 27, 2026
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