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Use of neighborhood and stratification approaches to speed up instance selection algorithm

机译:使用邻域和分层方法来加速实例选择算法

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This paper investigates a method for instance selection in the context of supervised classification adapted to large databases. Based on the scale up concept, the method reduces the time required to perform the selection procedure by enabling the application of known condensation instance techniques to only small data sets instead of the whole set. The novelty of our approach relies in the way of hybridizing neighborhood and stratification approaches. The key idea is to consider instances found out for a given strata to generate sub populations for the other strata representing critical regions of the feature space. Experiments performed with various data sets revealed the effectiveness and applicability of the proposed approach.
机译:本文调查了在适用于大型数据库的监督分类的背景下选择的方法。基于缩放概念,该方法通过使已知的冷凝实例技术应用于仅小数据集而不是整个集合来减少执行选择过程所需的时间。我们的方法的新颖性依赖于杂交街区和分层方法。关键的想法是考虑为给定地层发现的实例为代表特征空间的关键区域的其他地层生成子群。用各种数据集进行的实验揭示了所提出的方法的有效性和适用性。

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