The Quantum Approximate Optimization Algorithm and the Sherrington-Kirkpatrick Model at Infinite Size

Author:

Farhi Edward12,Goldstone Jeffrey2,Gutmann Sam,Zhou Leo13

Affiliation:

1. Google Inc., Venice, CA 90291, USA

2. Center for Theoretical Physics, Massachusetts Institute of Technology, Cambridge, MA 02139, USA

3. Department of Physics, Harvard University, Cambridge, MA 02138, USA

Abstract

The Quantum Approximate Optimization Algorithm (QAOA) is a general-purpose algorithm for combinatorial optimization problems whose performance can only improve with the number of layers p. While QAOA holds promise as an algorithm that can be run on near-term quantum computers, its computational power has not been fully explored. In this work, we study the QAOA applied to the Sherrington-Kirkpatrick (SK) model, which can be understood as energy minimization of n spins with all-to-all random signed couplings. There is a recent classical algorithm by Montanari that, assuming a widely believed conjecture, can efficiently find an approximate solution for a typical instance of the SK model to within (1−ϵ) times the ground state energy. We hope to match its performance with the QAOA.Our main result is a novel technique that allows us to evaluate the typical-instance energy of the QAOA applied to the SK model. We produce a formula for the expected value of the energy, as a function of the 2p QAOA parameters, in the infinite size limit that can be evaluated on a computer with O(16p) complexity. We evaluate the formula up to p=12, and find that the QAOA at p=11 outperforms the standard semidefinite programming algorithm. Moreover, we show concentration: With probability tending to one as n→∞, measurements of the QAOA will produce strings whose energies concentrate at our calculated value. As an algorithm running on a quantum computer, there is no need to search for optimal parameters on an instance-by-instance basis since we can determine them in advance. What we have here is a new framework for analyzing the QAOA, and our techniques can be of broad interest for evaluating its performance on more general problems where classical algorithms may fail.

Funder

ARO

Publisher

Verein zur Forderung des Open Access Publizierens in den Quantenwissenschaften

Subject

Physics and Astronomy (miscellaneous),Atomic and Molecular Physics, and Optics

Reference20 articles.

1. A. Montanari. ``Optimization of the Sherrington-Kirkpatrick Hamiltonian''. In Proceedings of the 60th Annual Symposium on Foundations of Computer Science (FOCS '19). Pages 1417–1433. (2019).

2. Edward Farhi, Jeffrey Goldstone, and Sam Gutmann. ``A Quantum Approximate Optimization Algorithm'' (2014). arXiv:1411.4028.

3. Edward Farhi, Jeffrey Goldstone, and Sam Gutmann. ``A Quantum Approximate Optimization Algorithm Applied to a Bounded Occurrence Constraint Problem'' (2015). arXiv:1412.6062.

4. Cedric Yen-Yu Lin and Yechao Zhu. ``Performance of QAOA on Typical Instances of Constraint Satisfaction Problems with Bounded Degree'' (2016). arXiv:1601.01744.

5. Fernando G. S. L. Brandao, Michael Broughton, Edward Farhi, Sam Gutmann, and Hartmut Neven. ``For Fixed Control Parameters the Quantum Approximate Optimization Algorithm's Objective Function Value Concentrates for Typical Instances'' (2018). arXiv:1812.04170.

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