Graph Contrastive Learning for Materials

11/24/2022
by   Teddy Koker, et al.
0

Recent work has shown the potential of graph neural networks to efficiently predict material properties, enabling high-throughput screening of materials. Training these models, however, often requires large quantities of labelled data, obtained via costly methods such as ab initio calculations or experimental evaluation. By leveraging a series of material-specific transformations, we introduce CrystalCLR, a framework for constrastive learning of representations with crystal graph neural networks. With the addition of a novel loss function, our framework is able to learn representations competitive with engineered fingerprinting methods. We also demonstrate that via model finetuning, contrastive pretraining can improve the performance of graph neural networks for prediction of material properties and significantly outperform traditional ML models that use engineered fingerprints. Lastly, we observe that CrystalCLR produces material representations that form clusters by compound class.

READ FULL TEXT
research
03/11/2020

Global Attention based Graph Convolutional Neural Networks for Improved Materials Property Prediction

Machine learning (ML) methods have gained increasing popularity in explo...
research
01/20/2022

Prediction of the electron density of states for crystalline compounds with Atomistic Line Graph Neural Networks (ALIGNN)

Machine learning (ML) based models have greatly enhanced the traditional...
research
09/26/2022

Material Prediction for Design Automation Using Graph Representation Learning

Successful material selection is critical in designing and manufacturing...
research
06/22/2023

StrainNet: Predicting crystal structure elastic properties using SE(3)-equivariant graph neural networks

Accurately predicting the elastic properties of crystalline solids is vi...
research
01/14/2022

Formula graph self-attention network for representation-domain independent materials discovery

The success of machine learning (ML) in materials property prediction de...
research
10/29/2020

Graph Neural Network for Metal Organic Framework Potential Energy Approximation

Metal-organic frameworks (MOFs) are nanoporous compounds composed of met...
research
06/19/2023

Substitutional Alloying Using Crystal Graph Neural Networks

Materials discovery, especially for applications that require extreme op...

Please sign up or login with your details

Forgot password? Click here to reset