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Web-Based Cluster Analysis System for China and Hong Kong's Stock Market

机译:基于Web的中国和香港股市聚类分析系统

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摘要

Data mining or knowledge discovery in database (KDD) is motivated by large amounts of computerized data and has been attracted a lot of interest in various areas. One area is to extract useful and predictive information from a huge financial data database so that investors can be more informed and makes more profitable investments. The efficiency of the information extraction has become the most concern problem when performing the extraction process. In this paper, we demonstrate how to apply conceptual clustering (hierarchical clustering algorithm), a data mining technique, on the Chinese and Hong Kong stock market's data. Conceptual hierarchical tree and cluster information table will be generated to give the concept to the clusters for further analysis in the subsequent mining process.
机译:数据挖掘或数据库中的知识发现(KDD)受到大量计算机化数据的推动,并且在各个领域引起了很多兴趣。一个领域是从庞大的财务数据数据库中提取有用的和可预测的信息,从而使投资者可以更了解情况并进行更有利可图的投资。在执行提取过程时,信息提取的效率已成为最关注的问题。在本文中,我们演示了如何在中国和香港股市的数据上应用概念聚类(分层聚类算法)(一种数据挖掘技术)。将生成概念层次树和群集信息表,以将概念提供给群集,以在后续的挖掘过程中进行进一步分析。

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