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Improvement of the kernel minimum squared error model for fast feature extraction

机译:改进内核最小平方误差模型以进行快速特征提取

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The kernel minimum squared error (KMSE) expresses the feature extractor as a linear combination of all the training samples in the high-dimensional kernel space. To extract a feature from a sample, KMSE should calculate as many kernel functions as the training samples. Thus, the computational efficiency of the KMSE-based feature extraction procedure is inversely proportional to the size of the training sample set. In this paper, we propose an efficient kernel minimum squared error (EKMSE) model for two-class classification. The proposed EKMSE expresses each feature extractor as a linear combination of nodes, which are a small portion of the training samples. To extract a feature from a sample, EKMSE only needs to calculate as many kernel functions as the nodes. As the nodes are commonly much fewer than the training samples, EKMSE is much faster than KMSE in feature extraction. The EKMSE can achieve the same training accuracy as the standard KMSE. Also, EKMSE avoids the overfitting problem. We implement the EKMSE model using two algorithms. Experimental results show the feasibility of the EKMSE model.
机译:核最小平方误差(KMSE)将特征提取器表示为高维核空间中所有训练样本的线性组合。为了从样本中提取特征,KMSE应该计算与训练样本一样多的内核函数。因此,基于KMSE的特征提取过程的计算效率与训练样本集的大小成反比。在本文中,我们提出了一种用于两类分类的有效内核最小平方误差(EKMSE)模型。提出的EKMSE将每个特征提取器表示为节点的线性组合,这是训练样本的一小部分。要从样本中提取特征,EKMSE仅需要计算与节点一样多的内核函数。由于节点通常少于训练样本,因此在特征提取方面,EKMSE比KMSE快得多。 EKMSE可以达到与标准KMSE相同的训练精度。而且,EKMSE避免了过拟合的问题。我们使用两种算法来实现EKMSE模型。实验结果表明了该模型的可行性。

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