4.7 Article

Strong generalization in quantum neural networks

Journal

QUANTUM INFORMATION PROCESSING
Volume 22, Issue 12, Pages -

Publisher

SPRINGER
DOI: 10.1007/s11128-023-04095-x

Keywords

Neural network; Quantum neural networks; Generalization; Classification

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This paper investigates the generalization of quantum neural networks and compares it with classical neural networks. The research proves that quantum neural networks have a theoretical value for generalization error bound and demonstrates their similar performance on the training dataset and test dataset.
Generalization is an important feature of neural networks (Nns) as it indicates their ability to predict new and unknown data. However, classical Nns face the challenge of overcoming overfitting in applications due to their nonlinear characteristics, which represents poor generalization. By combining quantum computing with Nns, quantum neural networks (Qnns) have more potential than classical Nns. In this work, we study the generalization of Qnns and compare it with classical Nns. We prove that Qnns have a generalization error bound and propose its theoretical value. We also show that Qnns perform almost the same on the training dataset and test dataset without the overfitting phenomenon. To validate our proposal, we simulate three Qnn models on two public datasets and compare them with a traditional network model. The results demonstrate that Qnns have ideal generalization, much better than classical Nns. Finally, we implement the experiment on a quantum processor to prove the simulation's results.

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