Domain-informed graph neural networks: A quantum chemistry case study (original) (raw)

Quantum Machine Learning With Graph Neural Networks for Predicting Quantum States in Molecular Systems

Samama Farooq

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Feature selection in molecular graph neural networks based on quantum chemical approaches

Daisuke Yokogawa

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Very Deep Graph Neural Networks Via Noise Regularisation

Yulia Rubanova

ArXiv, 2021

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Quantum Feature Maps for Graph Machine Learning on a Neutral Atom Quantum Processor

Constantin Dalyac

Cornell University - arXiv, 2022

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Fast Quantum Property Prediction via Deeper 2D and 3D Graph Networks

Youzhi Luo

ArXiv, 2021

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Computing Graph Neural Networks: A Survey from Algorithms to Accelerators

akshay kumar Jain

ACM Computing Surveys

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Quantum machine learning of graph-structured data

Megha Khosla

2021

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Hybrid Quantum-Classical Graph Convolutional Network

Tzu-Chieh Wei

ArXiv, 2021

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Learning How to Propagate Messages in Graph Neural Networks

Suhang Wang

Proceedings of the 27th ACM SIGKDD Conference on Knowledge Discovery & Data Mining, 2021

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Global Self-Attention as a Replacement for Graph Convolution

Md Shamim Hussain

Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining

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Memory-Based Graph Networks

Parsa Moradi

2020

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Quantum Mechanics and Machine Learning Synergies: Graph Attention Neural Networks to Predict Chemical Reactivity

Pierre Baldi

ArXiv, 2021

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Graph Neural Networks as Gradient Flows

Francesco Di Giovanni

2022

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Molecular graph generation with Graph Neural Networks

Pietro Bongini

2020

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Benchmarking Graph Neural Networks

Vijay Dwivedi

arXiv (Cornell University), 2020

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Analyzing the Expressive Power of Graph Neural Networks in a Spectral Perspective

Muhammet Balcilar

2021

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Neural Message Passing on High Order Paths

Tony Wu

Machine Learning: Science and Technology, 2021

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A Gaze into the Internal Logic of Graph Neural 1 Networks , with Logic 2

Paul Tarau

2022

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Bridging the Gap Between Spectral and Spatial Domains in Graph Neural Networks

Muhammet Balcilar

ArXiv, 2020

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Breaking the Limits of Message Passing Graph Neural Networks

Muhammet Balcilar

2021

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When Spectral Domain Meets Spatial Domain in Graph Neural Networks

Muhammet Balcilar

2021

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A Practical Tutorial on Graph Neural Networks

Jack Joyner

ACM Computing Surveys, 2022

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Memory-Augmented Graph Neural Networks: A Neuroscience Perspective

Vy Vo

arXiv (Cornell University), 2022

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A Comprehensive Survey on Graph Neural Networks

Philip Yu

IEEE Transactions on Neural Networks and Learning Systems, 2020

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Predicting Chemical Shifts with Graph Neural Networks

Maghesree Chakraborty

2020

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Gated Graph Recurrent Neural Networks

FERNANDO GAMA

IEEE Transactions on Signal Processing, 2020

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Graph Algorithms with Neutral Atom Quantum Processors

Constantin Dalyac

arXiv (Cornell University), 2024

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Efficient, Interpretable Graph Neural Network Representation for Angle-dependent Properties and its Application to Optical Spectroscopy

Tuấn Phạm

arXiv (Cornell University), 2021

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Quantum Graph Neural Networks for Track Reconstruction in Particle Physics and Beyond

Fabio Fracas

2020

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Efficient and interpretable graph network representation for angle-dependent properties applied to optical spectroscopy

Tuấn Phạm

npj Computational Materials

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Quantum evolution kernel: Machine learning on graphs with programmable arrays of qubits

Constantin Dalyac

Physical Review A

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Graph Neural Networks Are More Powerful Than we Think

Charilaos Kanatsoulis

arXiv (Cornell University), 2022

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Analyzing the Performance of Graph Neural Networks with Pipe Parallelism

Matthew Dearing

ArXiv, 2020

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Computational Capabilities of Graph Neural Networks

Marco Gori

IEEE Transactions on Neural Networks, 2009

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A Practical Guide to Graph Neural Networks

Jack Joyner

arXiv (Cornell University), 2020

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