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Partition based pattern synthesis technique with efficient algorithms for nearest neighbor classification

机译:基于分区的模式合成技术及其最近邻分类的高效算法

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摘要

Nearest neighbor (NN) classifier is a popular non-parametric classifier. It is conceptually a simple classifier and shows good performance. Due to the curse of dimensionality effect, the size of training set needed by it to achieve a given classification accuracy becomes prohibitively large when the dimensionality of the data is high. Generating artificial patterns can reduce this effect. In this paper, we propose a novel pattern synthesis method called partition based pattern synthesis which can generate an artificial training set of exponential order when compared with that of the given original training set. We also propose suitable faster NN based methods to work with the synthetic training patterns. Theoretically, the relationship between our methods and conventional NN methods is established. The computational requirements of our methods are also theoretically established. Experimental results show that NN based classifiers with synthetic training set can outperform conventional NN classifiers and some other related classifiers.
机译:最近邻居(NN)分类器是一种流行的非参数分类器。从概念上讲,它是一个简单的分类器,并显示出良好的性能。由于维数效应的诅咒,当数据的维数较高时,为达到给定分类精度所需的训练集的大小会变得过大。生成人工模式可以减少这种影响。在本文中,我们提出了一种新的模式合成方法,称为基于分区的模式合成,与给定的原始训练集相比,该方法可以生成指数级的人工训练集。我们还提出了合适的基于NN的更快方法来与综合训练模式一起使用。从理论上讲,我们的方法与传统的NN方法之间建立了关系。从理论上也确定了我们方法的计算要求。实验结果表明,具有综合训练集的基于NN的分类器性能优于传统的NN分类器和其他一些相关分类器。

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