Authors
Shi-Xin Zhang, Chang-Yu Hsieh, Shengyu Zhang, Hong Yao
Publication date
2021/10/8
Journal
Machine Learning: Science and Technology
Volume
2
Issue
4
Pages
045027
Publisher
IOP Publishing
Description
Variational quantum algorithms (VQAs) are widely speculated to deliver quantum advantages for practical problems under the quantum–classical hybrid computational paradigm in the near term. Both theoretical and practical developments of VQAs share many similarities with those of deep learning. For instance, a key component of VQAs is the design of task-dependent parameterized quantum circuits (PQCs) as in the case of designing a good neural architecture in deep learning. Partly inspired by the recent success of AutoML and neural architecture search (NAS), quantum architecture search (QAS) is a collection of methods devised to engineer an optimal task-specific PQC. It has been proven that QAS-designed VQAs can outperform expert-crafted VQAs in various scenarios. In this work, we propose to use a neural network based predictor as the evaluation policy for QAS. We demonstrate a neural predictor …
Total citations
20212022202320244132433
Scholar articles
SX Zhang, CY Hsieh, S Zhang, H Yao - Machine Learning: Science and Technology, 2021