Parameter Setting in Quantum Approximate Optimization of Weighted Problems
ORAL
Abstract
Quantum Approximate Optimization Algorithm (QAOA) is a leading candidate algorithm for solving combinatorial optimization problems on quantum computers. However, in many cases QAOA requires computationally intensive parameter optimization. The challenge of parameter optimization is particularly acute in the case of weighted problems, for which the eigenvalues of the phase operator are non-integer and the QAOA energy landscape is not periodic. In this work, we develop parameter setting heuristics for QAOA applied to a general class of weighted problems. First, we derive optimal parameters for QAOA with depth p=1 applied to the weighted MaxCut problem under different assumptions on the weights. In particular, we rigorously prove the conventional wisdom that in the average case the first local optimum near zero gives globally-optimal QAOA parameters. Second, for p ≥ 1 we prove that the QAOA energy landscape for weighted MaxCut approaches that for the unweighted case under a simple rescaling of parameters. Hence, we can use parameters previously obtained for unweighted MaxCut for weighted problems. Finally, we prove that for p=1 the QAOA objective sharply concentrates around its expectation, which means that our parameter setting rules hold with high probability for a random weighted instance. We numerically validate this approach on general weighted graphs and show that on average the QAOA energy with the proposed fixed parameters is only 1.1 percentage points away from that with optimized parameters.
*The authors thank Kunal Marwaha for early exploratory discussions, Aram Harrow for insightful discussions on biased SK, and their colleagues at the Global Technology Applied Research center of JPMorgan Chase for support and helpful discussions. Joao Basso acknowledges the support by a grant from the Simons Foundation under Award No. 825053.
–
Publication:Sureshbabu, Shree Hari, Dylan Herman, Ruslan Shaydulin, Joao Basso, Shouvanik Chakrabarti, Yue Sun, and Marco Pistoia. "Parameter Setting in Quantum Approximate Optimization of Weighted Problems." arXiv preprint arXiv:2305.15201 (2023).