Approximate Boltzmann Distributions in Quantum Approximate Optimization
Abstract
Approaches to compute or estimate the output probability distributions from the quantum approximate optimization algorithm (QAOA) are needed to assess the likelihood it will obtain a quantum computational advantage. We analyze output from QAOA circuits solving 7,200 random MaxCut instances, with qubits and depth parameter , and find that the average basis state probabilities follow approximate Boltzmann distributions: The average probabilities scale exponentially with their energy (cut value), with a peak at the optimal solution. We describe the rate of exponential scaling or "effective temperature" in terms of a series with a leading order term , with the optimal solution energy. Using this scaling we generate approximate output distributions with up to 38 qubits and find these give accurate accounts of important performance metrics in cases we can simulate exactly.
Cite
@article{arxiv.2212.01857,
title = {Approximate Boltzmann Distributions in Quantum Approximate Optimization},
author = {Phillip C. Lotshaw and George Siopsis and James Ostrowski and Rebekah Herrman and Rizwanul Alam and Sarah Powers and Travis S. Humble},
journal= {arXiv preprint arXiv:2212.01857},
year = {2023}
}
Comments
16 pages, 14 figures. v2 clarifies and shortens the presentation. v3 minor revisions