不同数据复杂度数据集特征选择方法的稳定性和准确性

Omaimah Al Hosni, A. Starkey
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引用次数: 0

摘要

用于评估特征选择技术的一个广泛标准是所选特征的分类器性能。最近在特征选择领域引起关注的另一个标准是特征选择技术的稳定性。我们的研究表明,使用不同数据特征的特征选择技术可能会在训练数据的变化下产生不同的特征子集。我们的研究动机是,研究界在研究复杂数据特征(如类重叠)对分类算法性能的影响方面做出了重大贡献;然而,对于复杂数据特征特征选择方法的稳定性和准确性的研究相对较少。因此,本研究旨在通过实证研究来衡量类重叠与不同数据特征的交互效应,从而为特征选择方法在与现实世界数据相关的不同数据挑战中误诊相关特征的根本原因提供有意义的见解,从而指导从业者和研究人员选择更适合特定数据集的正确特征选择方法。此外,本文还对特征选择稳定性的研究现状进行了综述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stability and Accuracy of Feature Selection Methods on Datasets of Varying Data Complexity
One widespread criterion used to evaluate feature selection techniques is the classifier performance of the selected features. Another criterion that has recently drawn attention in the feature selection community is the stability of feature selection techniques. Our study indicates that using feature selection techniques with different data characteristics may generate different subsets of features under variations to the training data. Our study motivation is that there are significant contributions in the research community from examining the effect of complex data characteristics such as class overlap on classification algorithms performance; however, relatively few studies have investigated the stability and the accuracy of feature selection methods with complex data characteristics. Accordingly, this study aims to conduct empirical study to measure the interactive effects of the class overlap with different data characteristics so we will provide meaningful insights into the root causes for feature selection methods misdiagnosing the relevant features among different data challenges associated with real world data in which will guide the practitioners and researchers to choose the correct feature selection methods that are more appropriate for particular dataset. Also, in this study we will provide a survey on the current state of research in the feature selection stability context.
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