An Artificial Immune Based Incremental Data Clustering Algorithm

Article Preview

Abstract:

An improved resource limited artificial immune algorithm is proposed, which is applied to the incremental data clustering. The algorithm adopts an improved function of stimulation level, allowing the system to distributing resources more reasonably. And the algorithm introduces the immune response model, simulating the initial response and the secondary response. Through simulation experiments on the UCI data sets, and comparison with the artificial immune based influential incremental clustering algorithms, it shows that the algorithm is effective, can extract data characteristics, and increases the clustering accuracy and data compression rate.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

2935-2938

Citation:

Online since:

December 2012

Authors:

Export:

Price:

[1] Li Tao. Computer immunology. Beijing: Electronic Industry Press (2004).

Google Scholar

[2] http: /archive. ics. uci. edu/ml/ datasets.

Google Scholar

[3] de Castro L N,Zuben F J V.AiNet:An Artificial Immune.Network for Data Analysis.Idea Group Publishing(2001).

Google Scholar

[4] Timmis J, Neal M. A resource limited artificial immune system for data analysis. Knowledge Based Systems, vol. 14(3-4) (2001), pp.121-130.

DOI: 10.1016/s0950-7051(01)00088-0

Google Scholar

[5] Neal M. An artificial immune system for continuous analysis of time-varying data. In: Proceedings of the First International Conference on Artificial Immune Systems. Berlin: Springer, (2002), pp.76-85.

Google Scholar

[6] Neal M. Meta-stable memory in an artificial immune network. In: Proceedings of the Second International Conference on Artificial Immune Systems. Berlin: Springer, (2003), p.168–181.

DOI: 10.1007/978-3-540-45192-1_17

Google Scholar

[7] Nasraoui O, Gonzalez F, Cardona C, et al. A scalable artificial immune system model for dynamic unsupervised learning. In: Proceedings of International Conference on Genetic and Evolutionary Computation. San Francisco: Morgan Kaufmann(2003).

DOI: 10.1007/3-540-45105-6_27

Google Scholar

[8] Li Jie, Gao Xinbo, Jiao Licheng. A CSA-Based New Fuzzy Clustering Algorithm. Journal of Electronics & Information Technology. vol. 27(2) (2005), pp.302-306.

Google Scholar

[9] Yue X, Mo H W, Chi Z X. Immune-inspired incremental feature selection technology to data stream. Applied soft Computing, vol. 8(2) (2008), pp.1041-1049.

DOI: 10.1016/j.asoc.2007.03.013

Google Scholar

[10] Sambasivam S, Theodosopoulos N. Advanced data clustering methods of mining Web documents. Issues in Informing Science and Information Technology, vol. 3(2006), p.563−579.

DOI: 10.28945/916

Google Scholar

[11] N. K. Jerne. Towards a network theory of the immune system. Annals of Immunology (Paris), vol. 125C(1974), pp.373-389.

Google Scholar