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Kernel-based discriminant feature extraction using a representative dataset

机译:基于内核的判别特征利用代表数据集提取

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摘要

Discriminant Feature Extraction (DFE) is widely recognized as an important pre-processing step in classification applications. Most DFE algorithms are linear and thus can only explore the linear discriminant information among the different classes. Recently, there has been several promising attempts to develop nonlinear DFE algorithms, among which is Kernel-based Feature Extraction (KFE). The efficacy of KFE has been experimentally verified by both synthetic data and real problems. However, KFE has some known limitations. First, EFE does not work well for strongly overlapped data. Second, KFE employs all of the training set samples during the feature extraction phase, which can result in significant computation when applied to very large datasets. Finally, KFE can result in overfitting. In this paper, we propose a substantial improvement to KEE that overcomes the above limitations by using a representative dataset, which consists of critical points that are generated from data-editing techniques and centroid points that are determined by using the Frequency Sensitive Competitive Learning (FSCL) algorithm. Experiments show that this new KFE algorithm performs well on significantly overlapped datasets, and it also reduces computational complexity. Further, by controlling the number of centroids, the overfitting problem can be effectively alleviated.
机译:判别特征提取(DFE)被广泛认识为分类应用中的重要预处理步骤。大多数DFE算法是线性的,因此只能探索不同类别中的线性判别信息。最近,已经有几次有希望开发非线性DFE算法的尝试,其中包括基于内核的特征提取(KFE)。 KFE的疗效通过合成数据和实际问题进行了实验验证。但是,KFE有一些已知的局限性。首先,EFE对强烈重叠的数据不起作用。其次,KFE在特征提取阶段使用所有训练集样本,这可能导致应用于非常大的数据集时的显着计算。最后,KFE可能导致过度装备。在本文中,我们提出了通过使用代表性数据集克服上述限制的基因的大量改进,该代表数据集由来自数据编辑技术和通过使用频率敏感的竞争学习确定的质心点(FSCL)而产生的关键点(FSCL ) 算法。实验表明,这种新的KFE算法在显着重叠的数据集上执行良好,并且还降低了计算复杂性。此外,通过控制质心的数量,可以有效地减轻过烧点问题。

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