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QTN-VQC: An End-to-End Learning framework for Quantum Neural Networks

Authors :
Qi, Jun
Yang, Chao-Han Huck
Chen, Pin-Yu
Source :
Quantum Tensor Networks in Machine Learning Workshop, NeurIPS 2021
Publication Year :
2021

Abstract

The advent of noisy intermediate-scale quantum (NISQ) computers raises a crucial challenge to design quantum neural networks for fully quantum learning tasks. To bridge the gap, this work proposes an end-to-end learning framework named QTN-VQC, by introducing a trainable quantum tensor network (QTN) for quantum embedding on a variational quantum circuit (VQC). The architecture of QTN is composed of a parametric tensor-train network for feature extraction and a tensor product encoding for quantum embedding. We highlight the QTN for quantum embedding in terms of two perspectives: (1) we theoretically characterize QTN by analyzing its representation power of input features; (2) QTN enables an end-to-end parametric model pipeline, namely QTN-VQC, from the generation of quantum embedding to the output measurement. Our experiments on the MNIST dataset demonstrate the advantages of QTN for quantum embedding over other quantum embedding approaches.<br />Comment: Preprint. A Non-archival and preliminary venue was presented in NeurIPS 2021, Quantum Tensor Networks in Machine Learning Workshop

Details

Database :
arXiv
Journal :
Quantum Tensor Networks in Machine Learning Workshop, NeurIPS 2021
Publication Type :
Report
Accession number :
edsarx.2110.03861
Document Type :
Working Paper