Automatic Elements Extraction of Chinese Web News Using Prior Information of Content and Structure

Chengru Song, Shifeng Weng, Changshui Zhang
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Abstract

We propose a set of efficient processes for extracting all four elements of Chinese news web pages, namely news title, release date, news source and the main text. Our approach is based on a deep analysis of content and structure features of current Chinese news. We take content indicators as the key to recover tree structure of the main text. Additionally, we come up with the concept of Length-Distance Ratio to help improve performance. Our method rarely depends on selection of samples and has strong generalization ability regardless of training process, distinguishing itself from most existing methods. We have tested our approach on 1721 labeled Chinese news pages from 429 web sites. Results show that an 87% accuracy was achieved for news source extraction, and over 95% accuracy for other three elements.
基于内容和结构先验信息的中文网络新闻元素自动提取
我们提出了一套高效的中文新闻网页四要素提取流程,即新闻标题、发布日期、新闻来源和正文。我们的方法是基于对当前中国新闻内容和结构特征的深入分析。我们将内容指标作为恢复正文树状结构的关键。此外,我们提出了长距离比的概念,以帮助提高性能。我们的方法很少依赖于样本的选择,无论训练过程如何,都具有较强的泛化能力,区别于现有的大多数方法。我们在429个网站的1721个有标签的中文新闻页面上测试了我们的方法。结果表明,新闻源提取的准确率达到87%,其他三个元素的准确率超过95%。
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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