Domain concept handling in automated text categorization

Y. Liu, H. Loh
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引用次数: 2

Abstract

Single term based document representations, e.g. bag-of-words, have been widely accepted in the machine learning, information retrieval and text mining community. One notable limitation of such methods is that they do not consider the rich information resident in the semantic relations among terms. This paper reports our approach of concepts handling in document representation and its effect on the performance of text categorization. We introduce a Frequent word Sequence algorithm that generates concept-centered phrases to render domain knowledge concepts. Our experimental study based on a domain centered corpus shows that a consistent performance improvement can be achieved when concept-centered phrases are included in addition to the single term based features in document representations. We also observed that a universally suitable support threshold does not exist and the removal of concept irrelevant sequences can possibly further improve the performance at a lower support level.
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自动文本分类中的领域概念处理
基于单术语的文档表示,如词袋,在机器学习、信息检索和文本挖掘领域已经被广泛接受。这些方法的一个明显的局限性是它们没有考虑驻留在术语之间的语义关系中的丰富信息。本文报道了我们在文档表示中概念处理的方法及其对文本分类性能的影响。我们引入了一个频繁词序列算法,该算法生成以概念为中心的短语来呈现领域知识概念。我们基于以领域为中心的语料库的实验研究表明,当在文档表示中除了基于单个术语的特征外,还包括以概念为中心的短语时,可以实现一致的性能改进。我们还观察到,不存在普遍适用的支持阈值,去除概念无关序列可能会进一步提高在较低支持水平下的性能。
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