Orbital Graph Convolutional Neural Network for Material Property Prediction
Mohammadreza Karamad, Rishikesh Magar, Yuting Shi, Samira Siahrostami,, Ian D. Gates, Amir Barati Farimani

TL;DR
This paper introduces OGCNN, a novel graph neural network incorporating atomic orbital interactions and topological features, significantly improving material property prediction accuracy over existing methods.
Contribution
The paper presents the OGCNN framework that integrates atomic orbital features and an encoder-decoder architecture for enhanced material property prediction.
Findings
OGCNN outperforms existing models like CGCNN, MBTR, and SOAP.
Incorporating orbital interactions improves prediction accuracy.
The model is effective for discovering new materials.
Abstract
Material representations that are compatible with machine learning models play a key role in developing models that exhibit high accuracy for property prediction. Atomic orbital interactions are one of the important factors that govern the properties of crystalline materials, from which the local chemical environments of atoms is inferred. Therefore, to develop robust machine learningmodels for material properties prediction, it is imperative to include features representing such chemical attributes. Here, we propose the Orbital Graph Convolutional Neural Network (OGCNN), a crystal graph convolutional neural network framework that includes atomic orbital interaction features that learns material properties in a robust way. In addition, we embedded an encoder-decoder network into the OGCNN enabling it to learn important features among basic atomic (elemental features), orbital-orbital…
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