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A study of the scaling up capabilities of stratified prototype generation

机译:分层原型生成的扩展能力研究

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Prototype generation is an appropriate data reduction process for improving the efficiency and the efficacy of the nearest neighbor rule. Specifically, evolutionary prototype generation techniques have been highlighted as the best performing methods. However, these methods can sometimes be inefficient when the data scale up. In other data reduction techniques, such as prototype selection, an stratification procedure has been successfully developed to deal with large data sets. In this study, we test the combination of stratification with prototype generation techniques, considering data sets with more than 10000 instances. We compare some of the most representative prototype reduction methods and perform a study of the effects of stratification in their behavior. The results, contrasted with nonparametric statistical tests, show that several prototype generation techniques present a better performance than previously analyzed methods.
机译:原型生成是一种适当的数据缩减过程,可用于提高最近邻规则的效率和功效。具体而言,进化原型生成技术已被强调为性能最佳的方法。但是,当数据扩展时,这些方法有时效率低下。在其他数据缩减技术中,例如原型选择,已经成功开发了分层程序来处理大型数据集。在这项研究中,我们考虑了具有10000多个实例的数据集,测试了分层与原型生成技术的结合。我们比较了一些最具代表性的原型还原方法,并进行了分层对其行为的影响的研究。与非参数统计测试相反,结果表明,几种原型生成技术比以前分析的方法具有更好的性能。

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