首页> 外文会议>Thirteenth Australasian Database Conference; Jan/Feb, 2002; Monash University, Melbourne >Classifying Text Documents by Associating Terms with Text Categories
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Classifying Text Documents by Associating Terms with Text Categories

机译:通过将术语与文本类别相关联来对文本文档进行分类

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Automatic text categorization has always been an important application and research topic since the inception of digital documents. Today, text categorization is a necessity due to the very large amount of text documents that we have to deal with daily. Many techniques and algorithms for automatic text categorization have been devised and proposed in the literature. However, there is still much room for improving the effectiveness of these classifiers, and new models need to be examined. We propose herein a new approach for automatic text categorization. This paper explores the use of association rule mining in building a text categorization system and proposes a new fast algorithm for building a text classifier. Our approach has the advantage of a very fast training phase, and the rules of the classifier generated are easy to understand and manually tuneable. Our investigation leads to conclude that association rule mining is a good and promising strategy for efficient automatic text categorization.
机译:自从数字文档问世以来,自动文本分类一直是重要的应用和研究主题。今天,由于我们每天必须处理大量文本文档,因此必须进行文本分类。在文献中已经设计和提出了许多用于自动文本分类的技术和算法。但是,仍然有很大的空间可以提高这些分类器的效率,因此需要研究新的模型。我们在这里提出一种用于自动文本分类的新方法。本文探讨了关联规则挖掘在构建文本分类系统中的应用,并提出了一种新的构建文本分类器的快速算法。我们的方法具有训练阶段非常快的优势,并且生成的分类器规则易于理解并且可以手动调整。我们的研究得出的结论是,关联规则挖掘是有效的自动文本分类的一种很好且有希望的策略。

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