Quantum Neural Network for Quantum Neural Computing
- URL: http://arxiv.org/abs/2305.08544v1
- Date: Mon, 15 May 2023 11:16:47 GMT
- Title: Quantum Neural Network for Quantum Neural Computing
- Authors: Min-Gang Zhou, Zhi-Ping Liu, Hua-Lei Yin, Chen-Long Li, Tong-Kai Xu,
Zeng-Bing Chen
- Abstract summary: We propose a new quantum neural network model for quantum neural computing.
Our model circumvents the problem that the state-space size grows exponentially with the number of neurons.
We benchmark our model for handwritten digit recognition and other nonlinear classification tasks.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Neural networks have achieved impressive breakthroughs in both industry and
academia. How to effectively develop neural networks on quantum computing
devices is a challenging open problem. Here, we propose a new quantum neural
network model for quantum neural computing using (classically-controlled)
single-qubit operations and measurements on real-world quantum systems with
naturally occurring environment-induced decoherence, which greatly reduces the
difficulties of physical implementations. Our model circumvents the problem
that the state-space size grows exponentially with the number of neurons,
thereby greatly reducing memory requirements and allowing for fast optimization
with traditional optimization algorithms. We benchmark our model for
handwritten digit recognition and other nonlinear classification tasks. The
results show that our model has an amazing nonlinear classification ability and
robustness to noise. Furthermore, our model allows quantum computing to be
applied in a wider context and inspires the earlier development of a quantum
neural computer than standard quantum computers.
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