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Clustering: from Clusters to Knowledge

Clustering: from Clusters to Knowledge
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摘要 Data analysis and automatic processing is often interpreted as knowledge acquisition. In many cases it is necessary to somehow classify data or find regularities in them. Results obtained in the search of regularities in intelligent data analyzing applications are mostly represented with the help of IF-THEN rules. With the help of these rules the following tasks are solved: prediction, classification, pattern recognition and others. Using different approaches---clustering algorithms, neural network methods, fuzzy rule processing methods--we can extract rules that in an understandable language characterize the data. This allows interpreting the data, finding relationships in the data and extracting new rules that characterize them. Knowledge acquisition in this paper is defined as the process of extracting knowledge from numerical data in the form of rules. Extraction of rules in this context is based on clustering methods K-means and fuzzy C-means. With the assistance of K-means, clustering algorithm rules are derived from trained neural networks. Fuzzy C-means is used in fuzzy rule based design method. Rule extraction methodology is demonstrated in the Fisher's Iris flower data set samples. The effectiveness of the extracted rules is evaluated. Clustering and rule extraction methodology can be widely used in evaluating and analyzing various economic and financial processes.
出处 《Computer Technology and Application》 2013年第6期284-290,共7页 计算机技术与应用(英文版)
关键词 Data analysis clustering algorithms K-MEANS fuzzy C-means rule extraction. 知识获取 聚类算法 IF-THEN规则 神经网络方法 K-均值聚类 提取规则 集群 智能数据分析
作者简介 Corresponding author: Peter Grabusts, Ph.D., associate professor, research fields: information technology, intellectual data analysis, clustering. E-mail: peter@ru.lv.
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参考文献14

  • 1P.N. Tan, M. Steinbach, V. Kumar, Introduction to Data Mining, Addison Wesley, 2005.
  • 2U. Fayyad, G. Piatetsky-Shapiro, P. Smyth, From data mining to knowledge discovery in databases, AI Magazine 17 (3) (1996) 37-54.
  • 3S. Russel, P. Norvig, Artificial Intelligence: A Modem Approach, Prentice Hall, 2010.
  • 4L. Fausett, Fundamentals of Neural Networks: Architectures, Algorithms and Applications, Prentice Hall International Inc., New York, 1993.
  • 5B.S. Everitt, Cluster Analysis, John Viley & Sons, London, 1993.
  • 6D.R. Hush, B.G. Home, Progress in supervised neural networks: What's new since Lippmann? IEEE Signal Processing Magazine 10 (1) (1993) 8-39.
  • 7M. Crawen, J. Shavlik, Using sampling and queries to extract rules from trained neural networks, in: Proceedings of the 11th International Conference on Machine Learning, San Francisco, CA, 1994.
  • 8R. Andrews, J. Diederich, A. Tickle, A survey and critique of techniques for extracting rules from trained artificial neural networks, Knowledge-Based Systems 8 (6) (1995) 373-389.
  • 9R. Andrews, S. Gewa, RULEX & CEBP networks as the basis for a rule refinement system, in: J. Hallam (Ed.), Hybrid Problems, Hybrid Solutions, IOS Press, 1995.
  • 10R.A. Fisher, The use of multiple measurements in taxonomic problems, Annals of Eugenics 7 (2) (1936) 179-188.

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