论文标题

评估量子神经网络中乙状结肠量子感知的性能

Evaluating the performance of sigmoid quantum perceptrons in quantum neural networks

论文作者

Wilkinson, Samuel A, Hartmann, Michael J

论文摘要

量子神经网络(QNN)已被提议作为量子机学习的有前途的架构。存在许多不同的量子电路设计被烙印为QNN,但是没有明确的候选人比其他候选人更合适。相反,寻找``量子感知者''(QNN的基本组成部分)仍在进行中。一个候选人是量子感知器,旨在模拟经典感知的非线性激活功能。但是,此类sigmoid量子量子(sqps(sqps)的sigmoid量子(sqps)可以保证该属性的属性,以确保任何属性的属性。从SQP构建的QNN将对他们的经典同行具有任何量子优势。 SQP。这表明通用近似定理是经典神经网络理论的基石,不是QNN的相关标准。

Quantum neural networks (QNN) have been proposed as a promising architecture for quantum machine learning. There exist a number of different quantum circuit designs being branded as QNNs, however no clear candidate has presented itself as more suitable than the others. Rather, the search for a ``quantum perceptron" -- the fundamental building block of a QNN -- is still underway. One candidate is quantum perceptrons designed to emulate the nonlinear activation functions of classical perceptrons. Such sigmoid quantum perceptrons (SQPs) inherit the universal approximation property that guarantees that classical neural networks can approximate any function. However, this does not guarantee that QNNs built from SQPs will have any quantum advantage over their classical counterparts. Here we critically investigate both the capabilities and performance of SQP networks by computing their effective dimension and effective capacity, as well as examining their performance on real learning problems. The results are compared to those obtained for other candidate networks which lack activation functions. It is found that simpler, and apparently easier-to-implement parametric quantum circuits actually perform better than SQPs. This indicates that the universal approximation theorem, which a cornerstone of the theory of classical neural networks, is not a relevant criterion for QNNs.

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