A Noise-Aware Scalable Subspace Classical Optimizer for the Quantum Approximate Optimization Algorithm
A Noise-Aware Scalable Subspace Classical Optimizer for the Quantum Approximate Optimization Algorithm
We introduce ANASTAARS, a noise-aware scalable classical optimizer for variational quantum algorithms such as the quantum approximate optimization algorithm (QAOA). ANASTAARS leverages adaptive random subspace strategies to efficiently optimize the ansatz parameters of a QAOA circuit, in an effort to address challenges posed by a potentially large number of QAOA layers. ANASTAARS iteratively constructs random interpolation models within low-dimensional affine subspaces defined via Johnson--Lindenstrauss transforms. This adaptive strategy allows the selective reuse of previously acquired measurements, significantly reducing computational costs associated with shot acquisition. Furthermore, to robustly handle noisy measurements, ANASTAARS incorporates noise-aware optimization techniques by estimating noise magnitude and adjusts trust-region steps accordingly. Numerical experiments demonstrate the practical scalability of the proposed method for near-term quantum computing applications.
Kwassi Joseph Dzahini、Jeffrey M. Larson、Matt Menickelly、Stefan M. Wild
计算技术、计算机技术
Kwassi Joseph Dzahini,Jeffrey M. Larson,Matt Menickelly,Stefan M. Wild.A Noise-Aware Scalable Subspace Classical Optimizer for the Quantum Approximate Optimization Algorithm[EB/OL].(2025-07-15)[2025-08-02].https://arxiv.org/abs/2507.10992.点此复制
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