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FSKNN: Multi-label text categorization based on fuzzy similarity and k nearest neighbors

机译:FSKNN:基于模糊相似度和k个最近邻居的多标签文本分类

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摘要

We propose an efficient approach, FSKNN, which employs fuzzy similarity measure (FSM) and k nearest neighbors (KNN), for multi-label text classification. One of the problems associated with KNN-like approaches is its demanding computational cost in finding the k nearest neighbors from all the training patterns. For FSKNN, FSM is used to group the training patterns into clusters. Then only the training documents in those clusters whose fuzzy similarities to the document exceed a predesignated threshold are considered in finding the k nearest neighbors for the document. An unseen document is labeled based on its k nearest neighbors using the maximum a posteriori estimate. Experimental results show that our proposed method can work more effectively than other methods.
机译:我们提出了一种有效的方法FSKNN,该方法采用模糊相似性度量(FSM)和k个最近邻(KNN)进行多标签文本分类。与类似KNN的方法相关的问题之一是在从所有训练模式中找到k个最近的邻居时,需要很高的计算成本。对于FSKNN,FSM用于将训练模式分组。然后,仅在那些与文档的模糊相似度超过预定阈值的聚类中的训练文档才被认为是找到该文档的k个最近邻居。使用最大后验估计值,基于看不到的文档的k个最邻近的邻居来对其进行标记。实验结果表明,我们提出的方法可以比其他方法更有效地工作。

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