Trainability Analysis of Quantum Optimization Algorithms from a Bayesian Lens
Yanqi Song, Yusen Wu, Sujuan Qin, Qiaoyan Wen, Jingbo B. Wang, Fei Gao

TL;DR
This paper analyzes the trainability of QAOA quantum optimization algorithms using Bayesian methods, demonstrating efficient training conditions for both noiseless and noisy circuits with specific depth bounds.
Contribution
It provides a Bayesian theoretical framework for understanding QAOA trainability, establishing depth bounds for efficient training in noiseless and noisy scenarios.
Findings
Efficient training of noiseless QAOA with depth ~√log n.
Noisy QAOA with depth O(log n / log(1/q)) can also be trained efficiently.
Insights into quantum algorithm performance in noisy intermediate-scale quantum devices.
Abstract
The Quantum Approximate Optimization Algorithm (QAOA) is an extensively studied variational quantum algorithm utilized for solving optimization problems on near-term quantum devices. A significant focus is placed on determining the effectiveness of training the -qubit QAOA circuit, i.e., whether the optimization error can converge to a constant level as the number of optimization iterations scales polynomially with the number of qubits. In realistic scenarios, the landscape of the corresponding QAOA objective function is generally non-convex and contains numerous local optima. In this work, motivated by the favorable performance of Bayesian optimization in handling non-convex functions, we theoretically investigate the trainability of the QAOA circuit through the lens of the Bayesian approach. This lens considers the corresponding QAOA objective function as a sample drawn from a…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography · Advanced Bandit Algorithms Research
