[1909.12264v1] Quantum Graph Neural Networks

We introduce Quantum Graph Neural Networks (QGNN), a new class of quantum neural network ansatze which are tailored to represent quantum processes which have a graph structure, and are particularly suitable to be executed on distributed quantum systems over a quantum network. Along with this general class of ansatze, we introduce further specialized architectures, namely, Quantum Graph Recurrent Neural Networks (QGRNN) and Quantum Graph Convolutional Neural Networks (QGCNN). We provide four example applications of QGNNs: learning Hamiltonian dynamics of quantum systems, learning how to create multipartite entanglement in a quantum network, unsupervised learning for spectral clustering, and supervised learning for graph isomorphism classification.

1 mentions: @q9ac
Date: 2019/11/09 17:20

Referring Tweets

@q9ac グラフ上の量子ニューラルネットワーク…グラフコンボリューションを量子NNにも持ち込んで、QGCNNをつくれる。量子系のシミュレーションが捗りそうだ t.co/gIKEOap7Dp

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