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Local Separability Assessment: A Novel Feature Selection Method for Multimedia Applications

机译:本地可分离评估:多媒体应用的新颖特征选择方法

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Feature selection technology can help to reduce feature redundancy and improve classification performance. Most general feature selection methods do not perform well on high-dimension large-scale data sets of multimedia applications. In this paper we propose a novel feature selection method named Local Separability Assessment. We try to measure the separation level of samples in subregions of feature space, and integrate them for evaluating the separability of features. Our method has favorable performance on large-scale continuous data sets, and requires no priori hypothesis on data distribution. The experiments on various applications have proved its excellence.
机译:特征选择技术可以帮助降低功能冗余并提高分类性能。大多数通用特征选择方法在高维大规模数据集上不得良好的多媒体应用程序。在本文中,我们提出了一种名为局部可分离性评估的新颖特征选择方法。我们尝试测量特征空间的子区域中的样本的分离级别,并将它们集成以评估功能的可分离性。我们的方法在大型连续数据集上具有良好的性能,并且在数据分布上不需要先验的假设。关于各种应用的实验证明了其卓越。

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