A Tutorial on Quantum Graph Recurrent Neural Network (QGRNN)
- Authors
- Choi, J.; Oh, S.; Kim, J.
- Issue Date
- 2021
- Publisher
- IEEE Computer Society
- Keywords
- Ising Model; QGRNN; VQE
- Citation
- International Conference on Information Networking, v.2021-January, pp 46 - 49
- Pages
- 4
- Journal Title
- International Conference on Information Networking
- Volume
- 2021-January
- Start Page
- 46
- End Page
- 49
- URI
- https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/63118
- DOI
- 10.1109/ICOIN50884.2021.9333917
- ISSN
- 1976-7684
- Abstract
- Over the past decades, various neural networks have been proposed with the rapid development of the machine learning field. In particular, graph neural networks using feature-vectors assigned to nodes and edges have been attracting attention in various fields. The usefulness of graph neural networks also affected the field of quantum computing, which led to the birth of quantum graph neural networks composed of parameterized quantum circuits. The quantum graph neural networks have many possibilities as applications from the simulation perspective of quantum dynamics. Among the application models of various quantum graph neural networks, the quantum graph recurrent neural network (QGRNN) is proven to be effective in training the Ising model Hamiltonian. Thus, this paper introduces the concepts of the Ising model, variational quantum eigensolver (VQE) for preparing quantum data, and QGRNN from a software engineer's point of view. © 2021 IEEE.
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