基于最近邻距离矩阵的遗传包装特征选择方法

M. Sainin, R. Alfred
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引用次数: 19

摘要

数据挖掘优化中的特征选择有很高的要求,特别是对数据的高维特征向量的选择。特征选择是一种为数据选择最佳特征(或特征组合)以达到相似或更好分类率的方法。目前,特征选择方法主要有三种:过滤、包装和嵌入。本文描述了一种基于遗传的包装方法,该方法优化了嵌入在一种称为监督最近邻距离矩阵(NNDM)的分类技术中的特征选择过程。该方法在从UCI机器学习存储库和其他数据集获得的几个数据集上实现和测试。结果表明,特征选择与监督NNDM相结合对新实例分类的预测精度有显著影响。因此,它可以用于其他需要特征降维的应用,如图像和生物信息学分类。
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A genetic based wrapper feature selection approach using Nearest Neighbour Distance Matrix
Feature selection for data mining optimization receives quite a high demand especially on high-dimensional feature vectors of a data. Feature selection is a method used to select the best feature (or combination of features) for the data in order to achieve similar or better classification rate. Currently, there are three types of feature selection methods: filter, wrapper and embedded. This paper describes a genetic based wrapper approach that optimizes feature selection process embedded in a classification technique called a supervised Nearest Neighbour Distance Matrix (NNDM). This method is implemented and tested on several datasets obtained from the UCI Machine Learning Repository and other datasets. The results demonstrate a significant impact on the predictive accuracy for feature selection combined with the supervised NNDM in classifying new instances. Therefore it can be used in other applications that require feature dimension reduction such as image and bioinformatics classifications.
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