基于主题-评论结构的文档重新排序

Liana Ermakova, J. Mothe
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引用次数: 10

摘要

介绍了一种基于文本主题-评论结构的信息检索中文档重新排序的新方法。虽然大多数信息检索模型都假设相关文档是关于查询的,并且只考虑单词袋就可以捕获关于性,但我们更愿意考虑更复杂的话语分析,通过区分文本的主题和文本中关于主题的言论(评论)来捕获文档相关性。从第一个检索到的文档中自动提取文本的主题-评论结构,然后对这些文档进行重新排序,以便最前面的文档是与查询共享主题的文档。对TREC集合的评价表明,该方法显著提高了检索性能。
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Document re-ranking based on topic-comment structure
This paper introduces a novel approach for document re-ranking in information retrieval based on topic-comment structure of texts. While most information retrieval models make the assumption that relevant documents are about the query and that aboutness can be captured considering bags of words only, we rather consider a more sophisticated analysis of discourse to capture document relevance by distinguishing the topic of a text from what is said about the topic (comment) in the text. The topic-comment structure of texts is extracted automatically from the first retrieved documents which are then re-ranked so that the top documents are the ones that share their topics with the query. The evaluation on TREC collections shows that the method significantly improves the retrieval performance.
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