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Main Authors: Li, Chao-Chao, He, Run-Hong, Wang, Zhao-Ming
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2307.14715
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author Li, Chao-Chao
He, Run-Hong
Wang, Zhao-Ming
author_facet Li, Chao-Chao
He, Run-Hong
Wang, Zhao-Ming
contents In pursuit of enhancing the predication capabilities of the neural network, it has been a longstanding objective to create dataset encompassing a diverse array of samples. The purpose is to broaden the horizons of neural network and continually strive for improved prediction accuracy during training process, which serves as the ultimate evaluation metric. In this paper, we explore an intriguing avenue for enhancing algorithm effectiveness through exploiting the knowledge blindness of neural network. Our approach centers around a machine learning algorithm utilized for preparing arbitrary quantum states in a semiconductor double quantum dot system, a system characterized by highly constrained control degrees of freedom. By leveraging stochastic prediction generated by the neural network, we are able to guide the optimization process to escape local optima. Notably, unlike previous methodologies that employ reinforcement learning to identify pulse patterns, we adopt a training approach akin to supervised learning, ultimately using it to dynamically design the pulse sequence. This approach not only streamlines the learning process but also constrains the size of neural network, thereby improving the efficiency of algorithm.
format Preprint
id arxiv_https___arxiv_org_abs_2307_14715
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Enhanced quantum state preparation via stochastic prediction of neural network
Li, Chao-Chao
He, Run-Hong
Wang, Zhao-Ming
Quantum Physics
In pursuit of enhancing the predication capabilities of the neural network, it has been a longstanding objective to create dataset encompassing a diverse array of samples. The purpose is to broaden the horizons of neural network and continually strive for improved prediction accuracy during training process, which serves as the ultimate evaluation metric. In this paper, we explore an intriguing avenue for enhancing algorithm effectiveness through exploiting the knowledge blindness of neural network. Our approach centers around a machine learning algorithm utilized for preparing arbitrary quantum states in a semiconductor double quantum dot system, a system characterized by highly constrained control degrees of freedom. By leveraging stochastic prediction generated by the neural network, we are able to guide the optimization process to escape local optima. Notably, unlike previous methodologies that employ reinforcement learning to identify pulse patterns, we adopt a training approach akin to supervised learning, ultimately using it to dynamically design the pulse sequence. This approach not only streamlines the learning process but also constrains the size of neural network, thereby improving the efficiency of algorithm.
title Enhanced quantum state preparation via stochastic prediction of neural network
topic Quantum Physics
url https://arxiv.org/abs/2307.14715