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A Semi-Supervised Relief Based Feature Extraction Algorithm

机译:基于半监督救济的特征提取算法

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摘要

Local Feature Extraction (LFE) algorithm is an effective feature extraction method developed in recent years. One of the shortcomings of the current LFE algorithm is that it can only process labeled data, and does not work well when the amount of the labeled data is limited. However, it is usually easy to obtain large amount of unlabeled data but only a few labeled data. In this paper, we propose a new feature extraction algorithm, called Semi-Supervised LFE (SSLFE), which can handle both labeled and unlabeled data to perform feature extraction. In the proposed algorithm, the labeled data are used to maximize the margin and the unlabeled data are used as regulations with respect to the intrinsic geometric structure of the data. The final projection matrix can be obtained by eigenvalue decomposition. Experiments on several datasets demonstrate that SSLFE achieves much higher classification accuracy than LFE.
机译:局部特征提取(LFE)算法是近年来发展起来的一种有效的特征提取方法。当前的LFE算法的缺点之一是它只能处理标记的数据,而当标记的数据量受到限制时,它不能很好地工作。但是,通常很容易获得大量的未标记数据,但仅获取少量标记数据。在本文中,我们提出了一种新的特征提取算法,称为半监督LFE(SSLFE),该算法可以处理标记和未标记的数据以执行特征提取。在提出的算法中,标记的数据用于最大化边距,而未标记的数据用作关于数据的固有几何结构的规则。最终投影矩阵可以通过特征值分解获得。在多个数据集上进行的实验表明,SSLFE比LFE具有更高的分类精度。

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