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首页> 外文期刊>International journal of data mining, modelling and management >Multi-label text classification using optimised feature sets
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Multi-label text classification using optimised feature sets

机译:使用优化的功能集进行多标签文本分类

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摘要

Multi-label text classification is the process of assigning multi-labels to an instance. A significant aspect of the text classification problem is the high dimensionality of the data which hinders the performance of the classifier. Hence, feature selection plays a significant role in classification process that removes the irrelevant data. In this paper, wrapper-based hybrid artificial bee colony and bacterial foraging optimisation (HABBFO) approach has been proposed to select the most appropriate feature subset for prediction. Initially, pre-processing such as tokenisation, stop word removal and stemming has been performed to extract the features (words). Experiments are conducted on the benchmark dataset and the results show that the proposed approach achieves better performance compared to the other feature selection techniques.
机译:多标签文本分类是将多标签分配给实例的过程。文本分类问题的一个重要方面是数据的高维度,这阻碍了分类器的性能。因此,特征选择在去除无关数据的分类过程中起着重要作用。本文提出了基于包装的混合人工蜂群和细菌觅食优化(HABBFO)方法,以选择最合适的特征子集进行预测。最初,已经执行了预处理(例如标记化,停用词删除和词干提取)以提取特征(词)。对基准数据集进行了实验,结果表明,与其他特征选择技术相比,该方法具有更好的性能。

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