NeurIPS2024

Statistical Estimation in the Spiked Tensor Model via the Quantum Approximate Optimization Algorithm

Leo Zhou, Joao Basso, Song Mei

摘要

The quantum approximate optimization algorithm (QAOA) is a general-purpose algorithm for combinatorial optimization. In this paper, we analyze the performance of the QAOA on a statistical estimation problem, namely, the spiked tensor model, which exhibits a statistical-computational gap classically. We prove that the weak recovery threshold of 11-step QAOA matches that of 11-step tensor power iteration. Additional heuristic calculations suggest that the weak recovery threshold of pp-step QAOA matches that of pp-step tensor power iteration when pp is a fixed constant. This further implies that multi-step QAOA with tensor unfolding could achieve, but not surpass, the classical computation threshold Θ(n(q2)/4)\Theta(n^{(q-2)/4}) for spiked qq-tensors. Meanwhile, we characterize the asymptotic overlap distribution for pp-step QAOA, finding an intriguing sine-Gaussian law verified through simulations. For some pp and qq, the QAOA attains an overlap that is larger by a constant factor than the tensor power iteration overlap. Of independent interest, our proof techniques employ the Fourier transform to handle difficult combinatorial sums, a novel approach differing from prior QAOA analyses on spin-glass models without planted structure.