Arkopal Dutt, Edwin Pednault, et al.
PRResearch
Parametrized quantum circuits can be used as quantum neural networks and have the potential to outperform their classical counterparts when trained for addressing learning problems. To date, much of the results on their performance on practical problems are heuristic in nature. In particular, the convergence rate for the training of quantum neural networks is not fully understood. Here, we analyze the dynamics of gradient descent for the training error of a class of variational quantum machine learning models. We define wide quantum neural networks as parametrized quantum circuits in the limit of a large number of qubits and variational parameters. Then, we find a simple analytic formula that captures the average behavior of their loss function and discuss the consequences of our findings. For example, for random quantum circuits, we predict and characterize an exponential decay of the residual training error as a function of the parameters of the system. Finally, we validate our analytic results with numerical experiments.
Arkopal Dutt, Edwin Pednault, et al.
PRResearch
Oscar Wallis, Stefano Mensa, et al.
QCE 2025
Jonathan Z. Lu, Rodrigo Araiza Bravo, et al.
Journal of Physics A
Jay Gambetta
ACS Spring 2025