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Rough set methods in feature selection and recognition

机译:特征选择和识别中的粗糙集方法

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摘要

We present applications of rough set methods for feature selection in pattern recognition. We emphasize the role of the basic constructs of rough set approach in feature selection, namely reducts and their approximations, including dynamic reducts. In the overview of methods for feature selection we discuss feature selection criteria, including the rough set based methods. Our algorithm for feature selection is based on an application of a rough set method to the result of principal components analysis (PCA) used for feature projection and reduction. Finally, the paper presents numerical results of face and mammogram recognition experiments using neural network, with feature selection based on proposed PCA and rough set methods.
机译:我们介绍了粗糙集方法在模式识别中进行特征选择的应用。我们强调粗糙集方法的基本构造在特征选择中的作用,即归约及其近似,包括动态归约。在特征选择方法概述中,我们讨论了特征选择标准,包括基于粗糙集的方法。我们的特征选择算法基于将粗糙集方法应用于用于特征投影和归约的主成分分析(PCA)的结果。最后,本文介绍了基于神经网络的人脸和乳房X线照片识别实验的数值结果,并基于提出的PCA和粗糙集方法进行了特征选择。

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