It's All Connected: Topology-Aware Structural Graph Encoding Improves Performance on Polymer Prediction
H. Ibrahim Erdogan (University of Bayreuth, Germany), Punith Raviswamy (University of Bayreuth, Germany), Nikita Agrawal (University of Bayreuth, Germany), Yannik K\"oster (Friedrich Schiller University Jena, Germany), Stefan Zechel (Friedrich Schiller University Jena, Germany)

TL;DR
This paper introduces a topology-aware graph encoding and self-supervised pretraining approach that significantly improves polymer property prediction accuracy over traditional methods.
Contribution
It proposes a novel graph construction method incorporating chain-scale topology and demonstrates the effectiveness of pretraining on unlabeled data for polymer prediction.
Findings
Pretraining with masked graph modeling reduces RMSE by 5.1% over baseline.
Graph construction with chain-scale topology improves prediction accuracy.
Chemical features are essential for optimal performance.
Abstract
Graph Neural Networks (GNNs) have achieved strong results in molecular property prediction, but polymers present distinct challenges: labeled datasets are scarce and small (typically in the order of hundreds of polymers) due to the need for expensive experimentation, and complex polymer chain distributions influence polymer properties. Established practice in polymer prediction represents polymers solely by graphs of their repeat units, discarding the chain-scale morphology that governs key properties such as the glass transition temperature (). In this work, we propose a principled graph construction that addresses this gap. Given a polymer's molecular mass distribution (MMD), we sample representative chains from the Schulz-Zimm distribution and construct representative sets of large graphs encoding chain-scale topology directly, with atoms and bonds featurized using rich chemical…
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