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Accelerating the kernel-method-based feature extraction procedure from the viewpoint of numerical approximation

机译:从数值逼近的角度加速基于核方法的特征提取过程

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摘要

The kernel method suffers from the following problem: the computational efficiency of the feature extraction procedure is inversely proportional to the size of the training sample set. In this paper, from a novel viewpoint, we propose a very simple and mathematically tractable method to produce the computationally efficient kernel-method-based feature extraction procedure. We first address the issue that how to make the feature extraction result of the reformulated kernel method well approximate that of the naive kernel method. We identify these training samples that statistically contribute much to the feature extraction results and exploit them to reformulate the kernel method to produce the computationally efficient kernel-method-based feature extraction procedure. Indeed, the proposed method has the following basic idea: when one training sample has little effect on the feature extraction result and statistically has the high correlation with regard to all the training samples, the feature extraction term associated with this training sample can be removed from the feature extraction procedure. The proposed method has the following advantages: First, it proposes, for the first time, to improve the kernel method through formal and reasonable evaluation on the feature extraction term. Second, the proposed method improves the kernel method at a low extra cost and thus has a much more computationally efficient training phase than most of the previous improvements to the kernel method. The experimental comparison shows that the proposed method performs well in classification problems. This paper also intuitively shows the geometrical relation between the identified training samples and other training samples.
机译:核方法遭受以下问题: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,从新颖的观点出发,我们提出了一种非常简单且在数学上易于处理的方法来产生基于核方法的高效计算特征提取过程。我们首先解决的问题是,如何使重新构造的内核方法的特征提取结果很好地接近于朴素内核方法的特征提取结果。我们确定这些训练样本在统计上对特征提取结果有很大的贡献,并利用它们来重新构造核方法,以产生计算效率高的基于核方法的特征提取过程。实际上,所提出的方法具有以下基本思想:当一个训练样本对特征提取结果影响很小,并且在统计上与所有训练样本具有高度相关性时,可以从该训练样本中删除与该训练样本相关的特征提取项特征提取过程。所提出的方法具有以下优点:首先,它首次提出通过对特征提取项进行形式化和合理的评估来改进核方法。其次,所提出的方法以较低的额外成本改进了内核方法​​,因此与以前对内核方法的大多数改进相比,具有计算效率更高的训练阶段。实验比较表明,该方法在分类问题上表现良好。本文还直观地显示了识别出的训练样本与其他训练样本之间的几何关系。

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