Hybrid Quantum Graph Neural Network for Molecular Property Prediction
Michael Vitz, Hamed Mohammadbagherpoor, Samarth Sandeep, Andrew, Vlasic, Richard Padbury, and Anh Pham

TL;DR
This paper introduces a hybrid quantum-classical graph neural network model that predicts material properties efficiently, combining quantum encoding with classical GNNs, and demonstrates competitive performance with classical methods.
Contribution
The paper presents a novel gradient-free hybrid quantum-classical GNN for material property prediction, integrating quantum encoding to enhance learning capabilities.
Findings
Competitive performance with classical GNNs and XGBoost
Quantum encoding offers potential for improved complex ML algorithms
Demonstrates feasibility of quantum-enhanced graph neural networks
Abstract
To accelerate the process of materials design, materials science has increasingly used data driven techniques to extract information from collected data. Specially, machine learning (ML) algorithms, which span the ML discipline, have demonstrated ability to predict various properties of materials with the level of accuracy similar to explicit calculation of quantum mechanical theories, but with significantly reduced run time and computational resources. Within ML, graph neural networks have emerged as an important algorithm within the field of machine learning, since they are capable of predicting accurately a wide range of important physical, chemical and electronic properties due to their higher learning ability based on the graph representation of material and molecular descriptors through the aggregation of information embedded within the graph. In parallel with the development of…
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Taxonomy
TopicsComputational Drug Discovery Methods · Various Chemistry Research Topics · Molecular spectroscopy and chirality
MethodsGraph Neural Network
