Stochastic gradient descent for hybrid quantum-classical optimization
Ryan Sweke, Frederik Wilde, Johannes Meyer, Maria Schuld, Paul K., Faehrmann, Barth\'el\'emy Meynard-Piganeau, Jens Eisert

TL;DR
This paper formalizes stochastic gradient descent in hybrid quantum-classical optimization, demonstrating convergence guarantees and showing that fewer measurements suffice for effective optimization in near-term quantum devices.
Contribution
It introduces a rigorous framework for stochastic gradient descent in quantum optimization, including convergence proofs and practical methods for reducing measurements.
Findings
Convergence guarantees for quantum stochastic gradient descent algorithms.
Effective optimization with fewer measurements and circuit executions.
Numerical results outperforming traditional methods on benchmark tasks.
Abstract
Within the context of hybrid quantum-classical optimization, gradient descent based optimizers typically require the evaluation of expectation values with respect to the outcome of parameterized quantum circuits. In this work, we explore the consequences of the prior observation that estimation of these quantities on quantum hardware results in a form of stochastic gradient descent optimization. We formalize this notion, which allows us to show that in many relevant cases, including VQE, QAOA and certain quantum classifiers, estimating expectation values with measurement outcomes results in optimization algorithms whose convergence properties can be rigorously well understood, for any value of . In fact, even using single measurement outcomes for the estimation of expectation values is sufficient. Moreover, in many settings the required gradients can be expressed as linear…
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