[1]侯善江[],张代远[][][]. 基于样条权函数神经网络P2P流量识别方法[J].计算机技术与发展,2014,24(07):21-24.
 HOU Shan-jiang[],ZHANG Dai-yuan[][][]. P2P Traffic Identification Based on Spline Weight Function Neural Network[J].,2014,24(07):21-24.
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 基于样条权函数神经网络P2P流量识别方法()
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《计算机技术与发展》[ISSN:1006-6977/CN:61-1281/TN]

卷:
24
期数:
2014年07期
页码:
21-24
栏目:
出版日期:
2014-07-10

文章信息/Info

Title:
 P2P Traffic Identification Based on Spline Weight Function Neural Network
文章编号:
1673-629X(2014)07-0021-04
作者:
 侯善江[1]张代远[1][2][3]
1 .南京邮电大学 计算机学院;江苏省无线传感网高技术研究重点实验室;南京邮电大学 计算机技术研究所;
Author(s):
 HOU Shan-jiang[1]ZHANG Dai-yuan[1][2][3]
关键词:
 样条权函数神经网络P2P流量识别插值
Keywords:
 spline weight functionneural networkP2Ptraffic identificationinterpolation
分类号:
TP301
文献标志码:
A
摘要:
 样条权函数神经网络是一种新兴的神经网络,克服了很多传统神经网络(如BP、RBF)的缺点:比如局部极小、收敛速度慢等。它具有拓扑结构简单,精确记忆训练过的样本,反映样本的信息特征,求得全局最小值等优点。基于这些优点,文中提出了一种基于样条权函数神经网络P2 P流量识别方法。通过提取P2 P流量特征,运用样条权函数神经网络结构对P2P流识别。 Matlab仿真和模拟实验结果表明了这种方案的可行性,与传统神经网络相比,样条权函数神经网络在时间效率上具有明显优势。
Abstract:
 Spline weight function neural network is a new kind of neural network. It overcomes many defects of traditional neural networks ( like BP,RBF) ,such as local minima,slow convergence,at the same time has many advantages,such as simple structure,remembering trained samples,reflecting the characteristics of the sample information,finding global minima directly and so on. A method of P2P traffic identification based on spline weight function neural network is presented in this paper based on advantages of this neural network. The structure of spline weight function neural network can identify P2P traffic by extracting characteristics of P2P traffic training. Matlab sim-ulation and experimental results show the feasibility of the scheme. Compared with the traditional neural network,spline weight function neural network has obvious advantages in time efficiency.

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更新日期/Last Update: 2015-03-12