Application of Fuzzy Clustering and DM in Information Extraction of Machine Learning

Qu Zhi-ming
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Abstract

Abstract—Data mining (DM) uses ordinary methods to discover useful knowledge from a large amount of data, which mines the implicit laws of poor information in the database. Cluster analysis is an important field of DM, which is to classify things in light of certain requirements and rules and plays very important role in mining the useful data. Combining with the fuzzy clustering and using the general mathematical system theory, the fuzzy clustering system model is setup. Fuzzy theory is applied to cluster analysis of DM and how to make use of the fuzzy relationship among samples to analyze the correlation is discussed. The main application steps of fuzzy clustering analysis in DM and the corresponding example are given. Through analysis and discussion, it is concluded that there are a few of different classification about machine learning modes. Comparing with the real records, the results by the fuzzy clustering are in keeping with the investigation in information extraction of machine learning.
模糊聚类和DM在机器学习信息提取中的应用
摘要:数据挖掘(DM)是用普通的方法从大量的数据中发现有用的知识,挖掘数据库中不良信息的隐含规律。聚类分析是数据挖掘的一个重要领域,它是根据一定的要求和规则对事物进行分类,在挖掘有用数据方面起着非常重要的作用。结合模糊聚类,运用一般数学系统理论,建立了模糊聚类系统模型。将模糊理论应用到决策的聚类分析中,讨论了如何利用样本间的模糊关系来分析相关性。给出了模糊聚类分析在决策管理中的主要应用步骤和相应的实例。通过分析和讨论,得出机器学习模式有几种不同的分类。通过与真实记录的比较,模糊聚类的结果与机器学习信息提取的研究结果一致。
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