Adaptive pruning-based optimization of parameterized quantum circuits
Sukin Sim, Jonathan Romero, Jerome F. Gonthier, Alexander A. Kunitsa

TL;DR
This paper introduces PECT, a heuristic method for optimizing parameterized quantum circuits by iteratively activating and optimizing subsets of parameters, improving convergence and efficiency in variational quantum algorithms.
Contribution
The paper proposes PECT, a novel adaptive pruning-based optimization strategy for variational quantum algorithms, enhancing convergence and reducing circuit depth.
Findings
PECT improves convergence of difficult ansatze.
Reduces optimization runtime and circuit depth.
Effective for molecular and Fermi-Hubbard models.
Abstract
Variational hybrid quantum-classical algorithms are powerful tools to maximize the use of Noisy Intermediate Scale Quantum devices. While past studies have developed powerful and expressive ansatze, their near-term applications have been limited by the difficulty of optimizing in the vast parameter space. In this work, we propose a heuristic optimization strategy for such ansatze used in variational quantum algorithms, which we call "Parameter-Efficient Circuit Training" (PECT). Instead of optimizing all of the ansatz parameters at once, PECT launches a sequence of variational algorithms, in which each iteration of the algorithm activates and optimizes a subset of the total parameter set. To update the parameter subset between iterations, we adapt the dynamic sparse reparameterization scheme by Mostafa et al. (arXiv:1902.05967). We demonstrate PECT for the Variational Quantum…
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