The quantum approximate optimization algorithm (QAOA) is a variational quantum algorithm (VQA) ideal for noisy intermediate-scale quantum (NISQ) processors, and is highly successful in solving combinatorial optimization problems (COPs). It has been observed that the optimal parameters obtained from one instance of a COP can be transferred to another instance, resulting in generally good solutions for the latter. In this work, we propose a refinement scheme in which only a subset of QAOA layers is optimized following parameter transfer, with a focus on the Max-Cut problem. Our motivation is to reduce the complexity of the loss landscape when optimizing all the layers of high-depth QAOA circuits, as well as to reduce the optimization time. We investigate the potential hierarchical roles of different layers and analyze how the approximation ratio scales with increasing problem size. Our findings indicate that the selective layer optimization scheme offers a favorable trade-off between solution quality and computational time, and can be more beneficial than full optimization at a lower optimization time.
Investigating layer-selective transfer learning of quantum approximate optimization algorithm parameters for the Max-Cut problem / Venturelli, Francesco Aldo; Das, Sreetama; Caruso, Filippo. - In: PHYSICAL REVIEW A. - ISSN 2469-9926. - ELETTRONICO. - 112:(2025), pp. 042428.0-042428.0. [10.1103/cjjm-87gl]
Investigating layer-selective transfer learning of quantum approximate optimization algorithm parameters for the Max-Cut problem
Venturelli, Francesco Aldo;Das, Sreetama;Caruso, Filippo
2025
Abstract
The quantum approximate optimization algorithm (QAOA) is a variational quantum algorithm (VQA) ideal for noisy intermediate-scale quantum (NISQ) processors, and is highly successful in solving combinatorial optimization problems (COPs). It has been observed that the optimal parameters obtained from one instance of a COP can be transferred to another instance, resulting in generally good solutions for the latter. In this work, we propose a refinement scheme in which only a subset of QAOA layers is optimized following parameter transfer, with a focus on the Max-Cut problem. Our motivation is to reduce the complexity of the loss landscape when optimizing all the layers of high-depth QAOA circuits, as well as to reduce the optimization time. We investigate the potential hierarchical roles of different layers and analyze how the approximation ratio scales with increasing problem size. Our findings indicate that the selective layer optimization scheme offers a favorable trade-off between solution quality and computational time, and can be more beneficial than full optimization at a lower optimization time.| File | Dimensione | Formato | |
|---|---|---|---|
|
2412.21071v1.pdf
Accesso chiuso
Descrizione: Max-cut-paper
Tipologia:
Preprint (Submitted version)
Licenza:
Open Access
Dimensione
1.24 MB
Formato
Adobe PDF
|
1.24 MB | Adobe PDF | Richiedi una copia |
I documenti in FLORE sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.



