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基于遗传算法的K均值聚类分析
引用本文:赖玉霞,刘建平,杨国兴.基于遗传算法的K均值聚类分析[J].计算机工程,2008,34(20):200-202.
作者姓名:赖玉霞  刘建平  杨国兴
作者单位:1. 浙江理工大学信息电子学院,杭州,310018
2. 浙江天健会计师事务所,杭州,310012
摘    要:传统K均值算法对初始聚类中心敏感,聚类结果随不同的初始输入而波动,容易陷入局部最优值。针对上述问题,该文提出一种基于遗传算法的K均值聚类算法,将K均值算法的局部寻优能力与遗传算法的全局寻优能力相结合,在自适应交叉概率和变异概率的遗传算法中引入K均值操作,以克服传统K均值算法的局部性和对初始中心的敏感性,实验证明,该算法有较好的全局收敛性,聚类效果更好。

关 键 词:K均值算法  聚类中心  遗传算法
修稿时间: 

K-Means Clustering Analysis Based on Genetic Algorithm
LAI Yu-xia,LIU Jian-ping,YANG Guo-xing.K-Means Clustering Analysis Based on Genetic Algorithm[J].Computer Engineering,2008,34(20):200-202.
Authors:LAI Yu-xia  LIU Jian-ping  YANG Guo-xing
Affiliation:(1. College of Information and Electronics, Zhejiang Science and Technology University, Hangzhou 310018;2. Zhejiang PanChina Accounting Firm, Hangzhou 310012)
Abstract:Traditional K-Means algorithm is sensitive to the initial centers and easy to get stuck at locally optimal value. To solve such problems, this paper presents an improved K-Means algorithm based on genetic algorithm. It combines the locally searching capability of the K-Means with the global optimization capability of genetic algorithm, and introduces the K-Means operation into the genetic algorithm of adaptive crossover probability and adaptive mutation probability, which overcomes the sensitivity to the initial start centers and locality of K-Means. Experimental results demonstrate that the algorithm has greater global searching capability and can get better clustering.
Keywords:K-Means algorithm  clustering center  genetic algorithm
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