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Analysis of new techniques to obtain quality training sets

机译:分析新技术以获得高质量的培训集

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摘要

This paper presents new algorithms to identify and eliminate mislabelled, noisy and atypical training samples for supervised learning and more specifically, for nearest neighbour classification. The main goal of these approaches is to enhance the classification accuracy by improving the quality of the training data. Several experiments with synthetic and real data sets are carried out in order to illustrate the behaviour of the schemes proposed here and compare their performance with that of other traditional techniques. It is also analysed the ability of these new algorithms to "reduce" the possible overlapping among regions of different classes.
机译:本文提出了新的算法,以识别和消除错误标记的,有噪声的和非典型的训练样本,用于监督学习,尤其是最近邻居分类。这些方法的主要目标是通过改善训练数据的质量来提高分类准确性。为了说明此处提出的方案的行为并将其性能与其他传统技术进行比较,对合成和真实数据集进行了几次实验。还分析了这些新算法“减少”不同类别区域之间可能重叠的能力。

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