增强特征空间:Web上非结构化数据的文本分类

Yang Song, Ding Zhou, Jian Huang, Isaac G. Councill, H. Zha, C. Lee Giles
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引用次数: 17

摘要

在大型文档语料库中寻找高效的非结构化文本分类方法是近年来备受关注的问题。传统的词袋表示方法将文档编码为特征向量,导致特征空间稀疏,维数大,难以达到较高的分类精度。本文讨论了对Web上的非结构化文档进行分类的问题。提出了一种利用传统特征约简技术和协同过滤方法来增强文档特征空间的分类方法。与基线词袋特征选择方法相比,该方法产生的特征空间的特征量少了一个数量级。在真实数据和基准语料库上的实验表明,我们的方法比支持向量机和AdaBoost分类器的传统方法都提高了分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Boosting the Feature Space: Text Classification for Unstructured Data on the Web
The issue of seeking efficient and effective methods for classifying unstructured text in large document corpora has received much attention in recent years. Traditional document representation like bag-of-words encodes documents as feature vectors, which usually leads to sparse feature spaces with large dimensionality, thus making it hard to achieve high classification accuracies. This paper addresses the problem of classifying unstructured documents on the Web. A classification approach is proposed that utilizes traditional feature reduction techniques along with a collaborative filtering method for augmenting document feature spaces. The method produces feature spaces with an order of magnitude less features compared with a baseline bag-of-words feature selection method. Experiments on both real-world data and benchmark corpus indicate that our approach improves classification accuracy over the traditional methods for both support vector machines and AdaBoost classifiers.
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