首页> 外文会议>Bioinformatics and Biomedicine, 2009. BIBM '09 >BioCLink: A Probabilistic Approach for Improving Genomics Search with Citation Links
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BioCLink: A Probabilistic Approach for Improving Genomics Search with Citation Links

机译:BioCLink:一种通过引文链接改善基因组学搜索的概率方法

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摘要

Combination of multiple evidences has been shown to be effective in genomics literature retrieval. Citation information is an intuitive evidence for facilitating literature retrieval. Previous research on citation analysis has demonstrated that useful linkage information can be extracted from the citation graph. However, the question of how the combination of citation evidence and content evidence should be done to maximize retrieval accuracy still remains largely unanswered. In this paper, we propose BioCLink, a new probabilistic approach that integrates citation evidence into content-based weighting function for improving genomics literature retrieval performance. Based on findings of our previous study, a strategy for modeling citation evidence is proposed. BioCLink provides the combination of content and citation evidences with a theoretical support. Moreover, exhaustiveparameter tuning can be avoided using BioCLink. Extensive experiments on TREC 2006 and 2007 Genomics collections demonstrate the advantages and effectiveness of our proposed methods.
机译:多种证据的结合已被证明在基因组学文献检索中是有效的。引用信息是促进文献检索的直观证据。先前对引文分析的研究表明,可以从引文图中提取有用的关联信息。但是,如何进行引证证据和内容证据的组合以最大程度地提高检索准确性的问题仍然悬而未决。在本文中,我们提出了BioCLink,这是一种新的概率方法,它将引证证据整合到基于内容的加权函数中,以改善基因组学文献检索性能。基于我们先前研究的发现,提出了一种对引用证据进行建模的策略。 BioCLink将内容和引用证据结合在一起,并提供理论支持。此外,使用BioCLink可以避免详尽的参数调整。在TREC 2006和2007 Genomics集合上进行的大量实验证明了我们提出的方法的优势和有效性。

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