Meta-Learning Digitized-Counterdiabatic Quantum Optimization
- URL: http://arxiv.org/abs/2206.09966v1
- Date: Mon, 20 Jun 2022 18:57:50 GMT
- Title: Meta-Learning Digitized-Counterdiabatic Quantum Optimization
- Authors: Pranav Chandarana, Pablo S. Vieites, Narendra N. Hegade, Enrique
Solano, Yue Ban, and Xi Chen
- Abstract summary: We tackle the problem of finding suitable initial parameters for variational optimization by employing a meta-learning technique using recurrent neural networks.
We investigate this technique with the recently proposed digitized-counterdiabatic quantum approximate optimization algorithm (DC-QAOA)
The combination of meta learning and DC-QAOA enables us to find optimal initial parameters for different models, such as MaxCut problem and the Sherrington-Kirkpatrick model.
- Score: 3.0638256603183054
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Solving optimization tasks using variational quantum algorithms has emerged
as a crucial application of the current noisy intermediate-scale quantum
devices. However, these algorithms face several difficulties like finding
suitable ansatz and appropriate initial parameters, among others. In this work,
we tackle the problem of finding suitable initial parameters for variational
optimization by employing a meta-learning technique using recurrent neural
networks. We investigate this technique with the recently proposed
digitized-counterdiabatic quantum approximate optimization algorithm (DC-QAOA)
that utilizes counterdiabatic protocols to improve the state-of-the-art QAOA.
The combination of meta learning and DC-QAOA enables us to find optimal initial
parameters for different models, such as MaxCut problem and the
Sherrington-Kirkpatrick model. Decreasing the number of iterations of
optimization as well as enhancing the performance, our protocol designs short
depth circuit ansatz with optimal initial parameters by incorporating
shortcuts-to-adiabaticity principles into machine learning methods for the
near-term devices.
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