MTRL-SCIAILGMar 30, 2025

POINT$^{2}$: A Polymer Informatics Training and Testing Database

arXiv:2503.23491v11 citationsh-index: 12
Originality Synthesis-oriented
AI Analysis

This provides a valuable resource for the polymer informatics community to accelerate polymer discovery and optimization, though it is incremental as it builds on existing datasets and methods.

The authors tackled the lack of a standardized workflow in polymer informatics by introducing POINT$^{2}$, a benchmark database and protocol that integrates prediction accuracy, uncertainty quantification, interpretability, and synthesizability, achieving property predictions across multiple polymer properties using ensemble ML models.

The advancement of polymer informatics has been significantly propelled by the integration of machine learning (ML) techniques, enabling the rapid prediction of polymer properties and expediting the discovery of high-performance polymeric materials. However, the field lacks a standardized workflow that encompasses prediction accuracy, uncertainty quantification, ML interpretability, and polymer synthesizability. In this study, we introduce POINT$^{2}$ (POlymer INformatics Training and Testing), a comprehensive benchmark database and protocol designed to address these critical challenges. Leveraging the existing labeled datasets and the unlabeled PI1M dataset, a collection of approximately one million virtual polymers generated via a recurrent neural network trained on the realistic polymers, we develop an ensemble of ML models, including Quantile Random Forests, Multilayer Perceptrons with dropout, Graph Neural Networks, and pretrained large language models. These models are coupled with diverse polymer representations such as Morgan, MACCS, RDKit, Topological, Atom Pair fingerprints, and graph-based descriptors to achieve property predictions, uncertainty estimations, model interpretability, and template-based polymerization synthesizability across a spectrum of properties, including gas permeability, thermal conductivity, glass transition temperature, melting temperature, fractional free volume, and density. The POINT$^{2}$ database can serve as a valuable resource for the polymer informatics community for polymer discovery and optimization.

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