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A comparative analysis of structural risk minimization by support vector machines and nearest neighbor rule

机译:支持向量机与最近邻规则对结构风险最小化的比较分析

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摘要

Support vector machines (SVMs) are by far the most sophisticated and powerful classifiers available today. However, this robustness and novelty in approach come at a large computational cost. On the other hand, nearest neighbor (NN) classifiers provide a simple yet robust approach that is guaranteed to converge to a result. In this paper, we present a technique that combines these two classifiers by adopting a NN rule-based structural risk minimization classifier. Using synthetic and real data, the classification technique is shown to be more robust to kernel conditions with a significantly lower computational cost than conventional SVMs. Consequently, the proposed method provides a powerful alternative to SVMs in applications where computation time and accuracy are of prime importance. Experimental results indicate that the NNSRM formulation is not only computationally less expensive, but also much more robust to varying data representations than SVMs.
机译:支持向量机(SVM)是迄今为止可用的最复杂,功能最强大的分类器。但是,这种方法的鲁棒性和新颖性以很大的计算成本为代价。另一方面,最近邻(NN)分类器提供了一种简单而健壮的方法,可以保证收敛到结果。在本文中,我们提出了一种通过采用基于NN规则的结构风险最小化分类器将这两个分类器组合在一起的技术。使用合成的和真实的数据,分类技术显示出对内核条件更强大,并且计算成本比传统SVM更低。因此,在计算时间和准确性至关重要的应用中,所提出的方法为SVM提供了强大的替代方案。实验结果表明,与SVM相比,NNSRM公式不仅在计算上更便宜,而且在变化的数据表示方面更强大。

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