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EFFICIENT KNN TEXT CATEGORIZATION BASED ON MULTIEDIT AND CONDENSING TECHNIQUES

机译:基于多重编辑和压缩技术的高效KNN文本分类

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As a simple and effective classification approach, KNN is widely used in text categorization.However, KNN classifier not only has the large computational and store requirements, but also deteriorates performance of classification because of uneven distribution of training data.In this paper, we present a combinational technique, multi-edit-nearesl-neighbor and condensing techniques, for reducing the noises of training data and decreasing the cost of time and space.Our experiment results illustrate that this strategy can solve above problems effectively.
机译:作为一种简单有效的分类方法,KNN被广泛用于文本分类中,但是KNN分类器不仅具有较大的计算和存储需求,而且由于训练数据分布不均而导致分类性能下降。实验结果表明,该策略可以有效地解决上述问题。

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