利用Web 2.0源进行Web内容分类

Somnath Banerjee, Martin Scholz
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引用次数: 2

摘要

本文讨论了经典文本挖掘框架没有捕捉到的Web页面分类的实际方面。分类器应该在各种各样的页面上表现良好。我们认为,构建训练语料库是构建此类分类器的瓶颈,如果目标是泛化到Web上以前未见过的页面类型,则必须小心。我们研究了从公开可用的Web资源自动构建训练语料库的技术,量化了它们之间的差异,并证明了在给定如此多样化的数据源的情况下,鼓励分类器之间的一致性大大优于忽略Web上数据源的不同性质的方法。
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Leveraging Web 2.0 Sources for Web Content Classification
This paper addresses practical aspects of Web page classification not captured by the classical text mining framework. Classifiers are supposed to perform well on a broad variety of pages. We argue that constructing training corpora is a bottleneck for building such classifiers, and that care has to be taken if the goal is to generalize to previously unseen kinds of pages on the Web. We study techniques for building training corpora automatically from publicly available Web resources, quantify the discrepancy between them, and demonstrate that encouraging agreement between classifiers given such diverse sources drastically outperforms methods that ignore the different natures of data sources on the Web.
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