What can we learn from quantum convolutional neural networks?
- URL: http://arxiv.org/abs/2308.16664v2
- Date: Fri, 5 Jul 2024 01:18:30 GMT
- Title: What can we learn from quantum convolutional neural networks?
- Authors: Chukwudubem Umeano, Annie E. Paine, Vincent E. Elfving, Oleksandr Kyriienko,
- Abstract summary: We show that working with quantum data can be perceived as embedding physical system parameters through a hidden feature map.
We also show that QCNNs with properly chosen ground state embeddings can be used for fluid dynamics problems.
- Score: 15.236546465767026
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We can learn from analyzing quantum convolutional neural networks (QCNNs) that: 1) working with quantum data can be perceived as embedding physical system parameters through a hidden feature map; 2) their high performance for quantum phase recognition can be attributed to generation of a very suitable basis set during the ground state embedding, where quantum criticality of spin models leads to basis functions with rapidly changing features; 3) pooling layers of QCNNs are responsible for picking those basis functions that can contribute to forming a high-performing decision boundary, and the learning process corresponds to adapting the measurement such that few-qubit operators are mapped to full-register observables; 4) generalization of QCNN models strongly depends on the embedding type, and that rotation-based feature maps with the Fourier basis require careful feature engineering; 5) accuracy and generalization of QCNNs with readout based on a limited number of shots favor the ground state embeddings and associated physics-informed models. We demonstrate these points in simulation, where our results shed light on classification for physical processes, relevant for applications in sensing. Finally, we show that QCNNs with properly chosen ground state embeddings can be used for fluid dynamics problems, expressing shock wave solutions with good generalization and proven trainability.
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