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改进的结合密度聚类的SVM快速分类方法
引用本文:张珍珍,董才林,陈增照,何秀玲.改进的结合密度聚类的SVM快速分类方法[J].计算机工程与应用,2011,47(2):136-138.
作者姓名:张珍珍  董才林  陈增照  何秀玲
作者单位:华中师范大学 数学与统计学学院,武汉 430079
摘    要:针对SVM在对大规模数据分类时求解规模过大的问题,提出了一种缩减数据集以提高训练速度的方法。该算法的第一步利用基于密度的方法大致定位能代表某个局域的质点,然后用SVM训练缩减后的数据得到一组支持向量,第二步的训练数据由支持向量以及其所代表的样本点构成。仿真实验证明该算法在保证分类准确率的情况下能有效地提高分类速度。

关 键 词:密度聚类  SVM算法  快速分类  大数据集  
收稿时间:2009-5-7
修稿时间:2009-7-6  

Improved fast classifier based on SVM and density clustering
ZHANG Zhenzhen,DONG Cailin,CHEN Zengzhao,HE Xiuling.Improved fast classifier based on SVM and density clustering[J].Computer Engineering and Applications,2011,47(2):136-138.
Authors:ZHANG Zhenzhen  DONG Cailin  CHEN Zengzhao  HE Xiuling
Affiliation:School of Mathematics and Statistics,Huazhong Normal University,Wuhan 430079,China
Abstract:In order to resolve the problem of actual large-scale data sets classification using SVM,this paper provides a method to improve the training speed through reducing data sets.The algorithm is divided into two steps.Firstly,it finds the samples that can represent a similar regional utilizing density clustering,then a set of support vectors will be gotten after using SVM to train reduced data sets.The second step is to find a new train data set assembled some support vectors and samples which belong to the regional represented by the support vector.The simulation shows that the algorithm proposed in this paper can improve classification speed while accuracy rate is acceptable.
Keywords:density clustering  Support Vector Machine(SVM)algorithm  fast classification  large data sets
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