Noise-Assisted Variational Hybrid Quantum-Classical Optimization
Gentini, Laura, Cuccoli, Alessandro, Pirandola, Stefano, Verrucchi, Paola, Banchi, Leonardo
Variational hybrid quantum-classical optimization represents one the most promising avenue to show the advantage of nowadays noisy intermediate-scale quantum computers in solving hard problems, such as finding the minimum-energy state of a Hamiltonian or solving some machine-learning tasks. In these devices noise is unavoidable and impossible to error-correct, yet its role in the optimization process is not much understood, especially from the theoretical viewpoint. Here we consider a minimization problem with respect to a variational state, iteratively obtained via a parametric quantum circuit, taking into account both the role of noise and the stochastic nature of quantum measurement outcomes. We show that the accuracy of the result obtained for a fixed number of iterations is bounded by a quantity related to the Quantum Fisher Information of the variational state. Using this bound, we find the unexpected result that, in some regimes, noise can be beneficial, allowing a faster solution to the optimization problem.
Dec-13-2019
- Country:
- Europe
- Italy (0.05)
- United Kingdom > England
- Cambridgeshire > Cambridge (0.04)
- San Marino > Fiorentino
- Fiorentino (0.04)
- Europe
- Genre:
- Research Report (0.64)
- Technology: