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一种量子神经网络模型及改进学习算法
引用本文:涂淑琴,张义青,王美华,万华.一种量子神经网络模型及改进学习算法[J].电脑与微电子技术,2010(11):3-6.
作者姓名:涂淑琴  张义青  王美华  万华
作者单位:华南农业大学信息学院,广州510640
基金项目:广东省自然科学基金(No.9251009001000005)
摘    要:提出一种量子BP网络模型及改进学习算法,该BP网络模型首先基于量子学中一位相移门和两位受控非门的通用性,构造出一种量子神经元,然后由该量子神经元构造隐含层,采用梯度下降法进行学习。输出层采用传统神经元构造,采用基于改进的带动量自适应学习率梯度下降法学习。在UCI两个数据集上采用该模型及算法,实验结果表明该方法比传统的BP网络具有较好的收敛速度和正确率。

关 键 词:量子计算  量子神经元  量子BP神经网络  学习算法  收敛速度

A Quantum Neural Network Model and Its Improved Learning Algorithm
Authors:TU Shu-qin  ZHANG Yi-qing  WANG Mei-hua  WAN Hua
Affiliation:(College of Information,South China Agricultural University,Guangzhou 510640)
Abstract:Presents a quantum BP neural network model and its improved learning algorithm.Firstly a quantum neuron is constructed based on the universality of single qubit rotation gate and two-qubit controlled not gate.Secondly,the hide layer is constructed and uses these quantum neurons with the application of the gradient descent algorithm and the output layer is made with traditional neurons,in which weight and bias values are updated according to the improved algorithm of gradient descent momentum and an adaptive learning rate.It is shown that this model and algorithm are superior to the conventional BP networks in two aspects:convergence speed and accuracy by two UCI's data sets examples.
Keywords:Quantum Computing  Quantum Neuron  Quantum BP Neural Network  Learning Algorithm  Convergence Speed
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