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Multi-Document Biased Summarization Based on Topic-Oriented Characteristic Database of Term-Pair Co-Occurrence

机译:基于术语对共同发生主题特征数据库的多文件偏见总结

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This paper proposes to utilize the latent semantic relations implied by co-occurrence terms in the sample documents, calculate the co-occurrence rate and establish the topic-oriented database of Word Co-occurrence to obtain Biased Summarization. The database is a semantic repository that can be expanded and updated in the particular topic filed. Then the automatic extraction method of Multi-document Biased Summarization is designed by using the similarity between the sentence of the target-side document and the clustering groups of the characteristic term-chains. Meanwhile, the characteristic terms are extracted from the database. In sense, this method can control the window size of the co-occurrence for one paragraph, and the experimental results ultimately show that this extraction method is effective in the tackling articles which are written in the traditional text structures.
机译:本文建议利用示例文档中的共同发生术语隐含的潜在语义关系,计算共发生率并建立主题的单词共同数据库,以获得偏见的概括。数据库是语义存储库,可以在提交的特定主题中扩展和更新。然后,通过使用目标侧文档和特征术语链的聚类组之间的相似性来设计多种文档偏置概要的自动提取方法。同时,特征术语从数据库中提取。有意义地,该方法可以控制一个段落的共同发生的窗口大小,并且实验结果最终表明,这种提取方法在以传统文本结构中写入的解决物品中是有效的。

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