期刊文献+

基于蚁群智能的客户群偏好分析方法 被引量:2

Analysis Method of Customers′ Preference Based on Ant Swarm Intelligence
原文传递
导出
摘要 采用蚁群智能的数据挖掘方法,根据客户对产品属性的偏好评分,对客户进行有效的分类。将客户偏好作为n维空间中的一个点,运用基于蚁群智能的聚类方法,根据预先设定的群体相似系数和拾起或放下概率进行聚类分析,在空间中采用递归算法,以获得不同偏好特征的客户群体模式。 Confronted with the harsh competition in the market, whoever understands the preferences of customers, will stand out and win. This paper uses ant swarm intelligence to classify customers on the basis of their evaluation of product attributes. Flatly, suppose that customer preference is a point in N-Dimensional space. Then by applying the method of ant swarm intelligence, classify customers on the basis of the presupposed group resemblance coefficient and the drop-pickup probability. At last, use recursive arithmetic in the space to educe the customer groups of different preferences.
作者 王卫平 杨杰
出处 《管理科学》 CSSCI 2005年第4期54-57,共4页 Journal of Management Science
关键词 蚁群智能 客户偏好 聚类分析 群体相似度 Ant swarm intelligence Customer preference Cluster analysis Swarm similarity
  • 相关文献

参考文献15

  • 1行小帅,焦李成.数据挖掘的聚类方法[J].电路与系统学报,2003,8(1):59-67. 被引量:55
  • 2吴斌,郑毅,傅伟鹏,史忠植.一种基于群体智能的客户行为分析算法[J].计算机学报,2003,26(8):913-918. 被引量:46
  • 3Jain A.K.,Murty M.N.,Flynn P.J.Data clustering:a survey[J].ACM Comput.Surv., 1999,(31),264-323.
  • 4Kamel M.,Seilm S.Z.New algorithm or solving the fuzzy clustering problems[J].Pattem Recognition, 1994,27(3),421-428.
  • 5Huang Z.Extensions to the k-means algorithm for clustering large data sets with categorical values[J].Data Mining and Knowledge Discovery, 1998,(2):283-304.
  • 6Johan Vesanto,Esa Alhoniemi.Clustering of the self-organizing map[J].IEEE Transaction on Neural Networks, 2000,11(3):586-599.
  • 7D.Alahakoon,S.K.Halgamuge.Dynamic self-organizing maps with controlled growth for knowledge discovery[J].IEEE Transaction on Neural Networks, 2000,11(3),601-614.
  • 8M.Dorigo,E.Bonabeau,G.Theraulaz.Ant algorithms and stigmergy[J].Future Generation Computer Systems, 2000,(6):851-871.
  • 9Dorigo M.,Bonabeau E.,Theralulaz G.Ant algorithms and stig2 mergy[J].Future Generation Computer Systems, 2000,16(8):851-871.
  • 10李志伟.基于群集智能的蚁群优化算法研究[J].计算机工程与设计,2003,24(8):27-29. 被引量:11

二级参考文献49

  • 1刘静,钟伟才,刘芳,焦李成.免疫进化聚类算法[J].电子学报,2001,29(z1):1868-1872. 被引量:43
  • 2刘健庄,谢维信,黄建军,李文化.聚类分析的遗传算法方法[J].电子学报,1995,23(11):81-83. 被引量:27
  • 3杨欣斌 孙京诰 黄道.基于蚁群算法的聚类学习新方法[A]..第四届全球智能控制大会论文集[C].上海交通大学出版社,..
  • 4[1]M.S. Chen, J. Han, P. S. Yu, Data niining, An overview fiom a database perspective, IEEE Trans. on Knowledge & Data Engineering, 1996, 8(6), 866-883 .
  • 5[2]T. Kohonen, Self-Organization and Associate Memory, Berlin, Springer-Verlag, 1984, Chapter 5.
  • 6[3]D. Alahakoon, S. K. Halgamuge, Dynamic self-organizing maps with controlled growth for knowledge discovery, IEEE Trans. on Neural Networks, 2000, NN-11(3), 601-614.
  • 7[4]D. Choi, S. Park, Self-creating and organizing neural networks, IEEE Trans. on Neural Networks,1994, NN-5(4), 561-575.
  • 8Dorigo M,Gambardella L M .Ant colony system: A cooperative learning approach to the traveling salesman problem[J].IEEE Trans. Evolutionary Computation, 1997,1 (1):53-66.
  • 9Tony White.Swarm Intelligence: A Gentle Introduction With Application [EB/OL] .http://www.sce.carleton.ca/netmanage/tony/swarm-presentation/index.htm.
  • 10Bonabeau, Dorigo M,Theraulaz G. Inspiration for optimization from social insect behaviour. Nature,2000,406(6) :39-42.

共引文献167

同被引文献20

引证文献2

二级引证文献16

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部