“…Notably, the trade-off between circuit depth and performance, constrained by coherence times in existing and near-term quantum processors, poses a significant challenge [19,20,21,22]. Additionally, the complexity introduced by the QAOA ansatz, with its increasing number of variational parameters, presents challenges for classical optimizers [23,24,25]. Previous studies have shown that the optimal QAOA parameters exhibit specific patterns [26,27], leading to depth-sequential strategies and machine learning-based methods for parameter initialization [10,23,28,29,30].…”