Shaoning Yao, Wei-Tsu Tseng, et al.
ADMETA 2011
This work focuses on investigating an end-to-end learning approach for quantum neural networks (QNN) on noisy intermediate-scale quantum devices. The proposed model combines a quantum tensor network (QTN) with a variational quantum circuit (VQC), resulting in a QTN-VQC architecture. This architecture integrates a QTN with a horizontal or vertical structure related to the implementation of quantum circuits for a tensor-train network. The study provides theoretical insights into the quantum advantages of the end-to-end learning pipeline based on QTN-VQC from two perspectives. The first perspective refers to the theoretical understanding of QTN-VQC with upper bounds on the empirical error, examining its learnability and generalization powers; The second perspective focuses on using the QTN-VQC architecture to alleviate the Barren Plateau problem in the training stage. Our experimental simulation on CPU/GPUs is performed on a handwritten digit classification dataset to corroborate our proposed methods in this work.
Shaoning Yao, Wei-Tsu Tseng, et al.
ADMETA 2011
Min Yang, Jeremy Schaub, et al.
Technical Digest-International Electron Devices Meeting
Corneliu Constantinescu
SPIE Optical Engineering + Applications 2009
A. Nagarajan, S. Mukherjee, et al.
Journal of Applied Mechanics, Transactions ASME