基于高阶量子系统重构的前馈神经网络

Junwei Zhang, Zhao Li, Hao Peng, Ming Li, Xiaofen Wang
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引用次数: 1

摘要

神经网络(Neural Network, NNs)因其优越的特征提取能力而得到广泛应用,其中前馈神经网络(Feedforward Neural Network, FNN)是理论研究的基础模型。近年来,基于量子力学的量子神经网络(Quantum Neural Networks, QNNs)因其具有挖掘量子相关性和并行计算的能力而受到广泛关注。由于在经典计算机上模拟一个量子位(即量子比特)需要两个经典比特,这给在经典计算机上模拟复杂的量子运算或构建大规模qnn带来了挑战。Hardy等人将经典概率论和量子概率论扩展到广义概率论(GPT),从而使构建高阶量子系统成为可能。本文将FNN的整个特征提取和集成过程看作是高阶量子系统的演化过程,然后利用量子相干性来描述网络模型各层提取的特征之间的复杂关系。直观地,我们重构FNN,将每一层处理后的一般向量转化为高阶量子系统的状态向量。在四个主流数据集上的实验结果表明,由高阶量子系统重构的FNN明显优于经典的FNN。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feedforward Neural Network Reconstructed from High-order Quantum Systems
Neural Networks (NNs) are widely used because of their superior feature extraction capabilities, among which Feedforward Neural Network (FNN) is used as the basic model for theoretical research. Recently, Quantum Neural Networks (QNNs) based on quantum mechanics have received extensive attention due to their ability to mine quantum correlations and parallel computing. Since two classical bits are required to simulate one qubit (i.e., quantum bit) on a classical computer, it brings challenges for simulating complex quantum operations or building large-scale QNNs on a classical computer. Hardy et al. extended the classical and quantum probability theories to the Generalized Probability Theory (GPT), so it is possible to construct high-order quantum systems. This paper regards the entire feature extraction and integration process of FNN as the evolution process of the high-order quantum system, and then leverages quantum coherence to describe the complex relationship between the features extracted by each layer of the network model. Intuitively, we reconstruct FNN to change the general vector processed by each layer into the state vector of the high-order quantum system. The experimental results on four mainstream datasets show that FNN reconstructed from the high-order quantum system is significantly better than the classical counterpart.
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