The Hausdorff distance measure for feature selection in learning applications

S. Piramuthu
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引用次数: 28

Abstract

Recent advances in computing technology in terms of speed, cost, as well as access to tremendous amounts of computing power and the ability to process huge amounts of data in reasonable time has spurred increased interest in data mining applications. Machine learning has been one of the methods used in most of these data mining applications. It is widely acknowledged that about 80% of the resources in a majority of data mining applications are spent on cleaning and pre-processing the data. However, there have been relatively few studies on pre-processing data used as input in these data mining systems. In this study, we present a feature selection method based on the Hausdorff distance measure, and evaluate its effectiveness in pre-processing input data for inducing decision trees. The Hausdorff distance measure has been used extensively in computer vision and graphics applications to determine the similarity of patterns. Two real-world financial credit scoring data sets are used to illustrate the performance of the proposed method.
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学习应用中特征选择的Hausdorff距离测度
计算技术在速度、成本、巨大的计算能力以及在合理时间内处理大量数据的能力方面的最新进展,激发了人们对数据挖掘应用程序的兴趣。机器学习已经成为大多数数据挖掘应用中使用的方法之一。人们普遍认为,在大多数数据挖掘应用程序中,大约80%的资源用于清理和预处理数据。然而,在这些数据挖掘系统中,对作为输入的数据进行预处理的研究相对较少。在本研究中,我们提出了一种基于Hausdorff距离度量的特征选择方法,并评估了其在诱导决策树的输入数据预处理中的有效性。豪斯多夫距离测度已广泛应用于计算机视觉和图形应用,以确定模式的相似性。两个真实的金融信用评分数据集被用来说明所提出的方法的性能。
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