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Rough Set Approach Based on Approximation Quality in Face Recognition

机译:基于面部识别近似质量的粗糙集方法

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The main contribution of this paper is the presentation of the rough set approach based on approximation quality that can be used in attributes reduction. Different from common works, the approach is the multi-implementation of the reduction process based on approximation quality, and the processing will end when performance criterion goal is achieved. Experiments on datasets from UCI repository result in good performance. The method is also employed in face recognition and the numerical results are presented. These results reveal that the performance of the reduced data set is almost as good as the original, whereas the amount of reduced attributes is only around 60 percent of the unreduced.
机译:本文的主要贡献是基于近似质量的粗糙集方法呈现,可用于减少属性。与共同作品不同,该方法是基于近似质量的减少过程的多实现,并且处理将在实现性能标准目标时结束。 UCI存储库的数据集实验结果良好。该方法也用于面部识别,并呈现数值结果。这些结果表明,减少数据集的性能几乎与原版一样好,而降低的属性的数量仅为未收音的60%。

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