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Edited Nearest Neighbor Rule for Improving Neural Networks Classifications

机译:编辑最近邻规则以改善神经网络分类

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The quality and size of the training data sets is a critical stage on the ability of the artificial neural networks to generalize the characteristics of the training examples. Several approaches are focused to form training data sets by identification of border examples or core examples with the aim to improve the accuracy of network classification and generalization. However, a refinement of data sets by the elimination of outliers examples may increase the accuracy too. In this paper, we analyze the use of different editing schemes based on nearest neighbor rule on the most popular neural networks architectures.
机译:训练数据集的质量和大小是人工神经网络概括训练示例特征的能力的关键阶段。几种方法致力于通过识别边界示例或核心示例来形成训练数据集,目的是提高网络分类和泛化的准确性。但是,通过消除异常值示例来完善数据集也可以提高准确性。在本文中,我们分析了在最流行的神经网络体系结构上基于最近邻规则的不同编辑方案的使用。

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