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Keyword Combination Extraction in Text Categorization Based on Ant Colony Optimization

机译:基于蚁群优化的文本分类中的关键词组合提取

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Due to the increasing number of documents in digital form, the automated text categorization (TC) has become more and more promising in the last ten years. A TC system can automatically assign a document with the most suitable category, but the reason for such an assignment is usually unknown by users. To make the TC system be interpretable, it is necessary to select a group of keywords, or termed a keyword combination, to describe each text category. In this paper, we propose a novel algorithm, keyword combination extraction based on ant colony optimization (KCEACO), to search the optimal keyword combination of a target category. By extending the traditional feature selection techniques, an evaluation function is designed for evaluating a keyword combination. This function takes into account the relationships among different keywords. Experimental results show that KCEACO can efficiently find the optimal keyword combination from a large number of candidate combinations.
机译:由于数字形式中越来越多的文件,自动文本分类(TC)在过去十年中变得越来越有前景。 TC系统可以自动分配包含最合适的类别的文档,但此类分配的原因通常由用户未知。为了使TC系统可解释,有必要选择一组关键字或称为关键字组合来描述每个文本类别。在本文中,我们提出了一种基于蚁群优化(KCEACO)的新型算法,关键词组合提取,用于搜索目标类别的最佳关键字组合。通过扩展传统的特征选择技术,评估功能旨在评估关键字组合。此功能考虑了不同关键字之间的关系。实验结果表明,KCeAco可以有效地从大量候选组合找到最佳关键字组合。

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