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Minimal consistent set (MCS) identification for optimal nearest neighbor decision systems design

机译:最小一致性集(MCS)标识,用于最佳最近邻决策系统设计

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摘要

A new approach is presented in this study for tackling the problem of high computational demands of nearest neighbor (NN) based decision systems. The approach, based on the concept of an optimal subset selection from a given training data set, derives a consistent subset which is aimed to be minimal in size. This minimal consistent subset (MCS) selection, in contrast to most of the other previous attempts of this nature, leads to an unique solution irrespective of the initial order of presentation of the data. Further, consistency property is assured at every iteration. Also, unlike under most prior approaches, the samples are selected here in the order of significance of their contribution for enabling the consistency property. This provides insight into the relative significance of the samples in the training set. Experimental results based on a number of independent training and test data sets are presented and discussed to illustrate the methodology and bring to focus its benefits. These results show that the nearest neighbor decision system performance suffers little degradation when the given large training set is replaced by its much smaller MCS in the operational phase of testing with an independent test set. A direct experimental comparison with a prior approach is also furnished to further strengthen the case for the new methodology.
机译:在这项研究中提出了一种新方法,用于解决基于最近邻(NN)的决策系统的高计算需求的问题。该方法基于从给定训练数据集中选择最佳子集的概念,得出旨在最小化大小的一致子集。与这种性质的其他大多数先前尝试相比,这种最小一致性子集(MCS)选择导致了唯一的解决方案,而与数据呈现的初始顺序无关。此外,在每次迭代中确保一致性属性。此外,与大多数现有方法不同,此处按启用一致性属性的贡献的重要性顺序选择样本。这可以洞悉训练集中样本的相对重要性。提出并讨论了基于大量独立训练和测试数据集的实验结果,以说明该方法并着重于其好处。这些结果表明,在给定的大型训练集使用独立的测试集进行测试的操作阶段中,将给定的大型训练集替换为其较小的MCS时,最近邻决策系统的性能几乎不会降低。还提供了与现有方法的直接实验比较,以进一步加强新方法的论据。

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