Document classification with a weighted frequency pattern tree algorithm

Froila Helixia Dsouza, V. S. Ananthanarayana
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引用次数: 3

Abstract

Document classification can be defined as the task of automatically categorizing collections of electronic documents into their annotated classes, based on their contents. It is an important problem in Data mining. Due to the exponential growth of documents in the Internet and the emergent need to organize them, developing an efficient document classification method to automatically manipulate web documents is of great importance and has received an ever-increased attention in the recent years. However, the existing approaches to text classification treat documents primarily as a bag of words, where all the information about the document is gathered based on the presence of individual words in the document, and not in what order or context those words appear in a sentence. In this paper we investigate the possibility of adopting the FP-tree, a data structure used in itemset mining, for the representation of training documents in text classification while preserving sentence information. Comparison between our method and other conventional document classification algorithms is conducted on several corpora. The experimental results indicate that our proposed algorithm yields much better performance than other conventional algorithms, especially the ones with primarily disjoint classification categories.
基于加权频率模式树算法的文档分类
文档分类可以定义为根据电子文档集合的内容自动将其分类为带注释的类的任务。它是数据挖掘中的一个重要问题。由于互联网上文档的指数级增长和对文档进行组织的迫切需要,开发一种有效的文档分类方法来自动处理网络文档具有重要的意义,近年来受到越来越多的关注。但是,现有的文本分类方法主要将文档视为一袋单词,其中关于文档的所有信息都是基于文档中单个单词的存在而收集的,而不是基于这些单词在句子中出现的顺序或上下文。本文研究了在保留句子信息的同时,采用项目集挖掘中使用的FP-tree数据结构来表示文本分类中训练文档的可能性。在多个语料库上,将本文方法与其他传统的文档分类算法进行了比较。实验结果表明,该算法的性能明显优于其他传统算法,特别是在分类类别主要不相交的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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