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An Effective Supervised Filter based Feature Selection Algorithm using Rough Set Theory

机译:基于粗糙集理论的基于有效的监督滤波器特征选择算法

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Data is generally represented by high dimensional feature vectors in many areas, such as pattern recognition, data mining and machine learning. Classification of useful knowledge in high dimensional data collections is an important and demanding area. Rough set theory, is a significant component of soft computing paradigm for data analysis based on classification of objects of interest into similarity classes, which are indiscernible with respect to some features. This theory offers fundamental concepts of attribute (feature) reduction. In this work supervised feature selection algorithms using Rough set theory which falls under filter method is studied. An enhanced version of Rough set theory based algorithm is proposed which exploits the lower approximation, dependency and significance measure of attributes. The experimental analysis for the proposed method is performed on five data sets of UCI machine learning repository. The performance of the reduced data set is measured by the classification accuracy and it is evaluated using WEKA classifier tool. Result analysis and comparison shows the efficiency of the proposed algorithm.
机译:数据通常由许多区域中的高维特征向量表示,例如模式识别,数据挖掘和机器学习。高维数据收集中有用知识的分类是一个重要和苛刻的区域。粗糙集理论是基于感兴趣对象分类的数据分析的软计算范例的重要组成部分,这对一些特征无敏感。该理论提供了减少属性(特征)的基本概念。在这项工作中,研究了使用粗糙集理论的监督特征选择算法,该算法在过滤方法下落下。提出了基于粗糙集理论的增强版本,利用了属性的较低近似,依赖性和重要性测量。所提出的方法的实验分析是对UCI机器学习存储库的五个数据集进行的。减少数据集的性能由分类准确率测量,使用Weka分类器工具进行评估。结果分析和比较显示了所提出的算法的效率。

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