构造虚拟样本改进核主成分分析

Ying-nan Zhao, Rui Ma, Xuezhi Wen
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引用次数: 2

摘要

虽然核方法在特征提取中得到了广泛的应用,但其特征提取效率与训练样本集的大小成反比。为了提高基于核方法的特征提取的计算效率,我们对核方法进行了改进。这种改进假设特征空间中的判别向量可以用一些构造的虚拟样本向量的一定线性组合来近似表示。我们使用一种非常简单且计算效率高的迭代算法逐一确定这些虚拟样本向量。该算法具有简单、鲁棒性和竞争性强的特点。当我们确定虚拟样本向量时,我们只需要将虚拟样本向量的初始值设置为随机值。实验表明,该方法既能有效提取特征,又具有良好稳定的分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Construct Virtual Samples for Improving Kernel PCA
Though kernel methods have been widely used for feature extraction, it suffers from the problem that its feature extraction efficiency is in inverse proportion to the size of the training sample set. In order to make kernel-methods-based feature extraction computationally more efficient, we propose a novel improvement to the kernel method. This improvement assumes that the discriminant vector in the feature space can be approximately expressed by a certain linear combination of some constructed virtual sample vectors. We determine these virtual sample vectors one by one by using a very simple and computationally efficient iterative algorithm. The algorithm is simple, robust and competitive. When we determine virtual sample vectors, we need only to set the initial values of the virtual sample vectors to random values. The experiments show that our method can achieve the goal of efficient feature extraction as well as a good and stable classification accuracy.
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