基于滤波技术的特征子集选择

K. Bibi, M. Banu
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引用次数: 6

摘要

通过在知识管理过程中应用技术,从大量的数据中发现有意义的知识,这些技术被称为数据挖掘技术。对于特定领域,需要一种称为数据挖掘的知识发现形式来解决问题。未知数据的类别通过称为分类的技术来检测。神经网络,基于规则的,决策树,贝叶斯是一些现有的方法用于分类。在应用任何挖掘技术之前,有必要过滤不相关的属性。嵌入式、包装和过滤技术是用于过滤的各种特征选择技术。在本文中,我们提出了一种改进的方法,利用现有的余弦相似度度量从大量属性中选择属性。采用了决策树分类技术、J48算法和朴素贝叶斯分类器。上述技术通过从UCI存储库中获取的两个不同数据集进行分析,并生成结果。从实现结果来看,本文提出的子集评估方法具有较高的准确率和较低的错误率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature subset selection based on Filter technique
From a large amount of data, significant knowledge is discovered by means of applying techniques in the knowledge management process and those techniques is known as Data mining techniques. For a specific domain, a form of knowledge discovery called data mining is necessary for solving the problems. The classes of unknown data are detected by the technique called classification. Neural networks, rule based, decision trees, Bayesian are the some of the existing methods used for classification. It is necessary to filter the irrelevant attributes before applying any mining techniques. Embedded, Wrapper and Filter techniques are various feature selection techniques used for filtering. In this paper, we have proposed an improved method using the existing cosine similarity measure for selecting the attributes from a large number of attributes. The decision tree classification technique J48 algorithm and Naive Bayes classifier are used. The above techniques are analyzed by two different datasets taken from the UCI repository and the results are generated. From the implementation result, our proposed subset evaluation method gives the best result with high accuracy and less error rate.
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