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Information Extraction as Link Prediction: Using Curated Citation Networks to Improve Gene Detection

机译:信息提取作为链接预测:使用策划的引用网络改善基因检测

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摘要

In this paper we explore the usefulness of various types of publication-related metadata, such as citation networks and curated databases, for the task of identifying genes in academic biomedical publications. Specifically, we examine whether knowing something about which genes an author has previously written about, combined with information about previous coauthors and citations, can help us predict which new genes the author is likely to write about in the future. Framed in this way, the problem becomes one of predicting links between authors and genes in the publication network. We show that this solely social-network based link prediction technique outperforms various baselines, including those relying only on non-social biological information.
机译:在本文中,我们探讨了各种类型的与出版物相关的元数据(例如引文网络和精选数据库)对于鉴定学术生物医学出版物中的基因的作用的有用性。具体来说,我们研究是否知道某位作者先前曾撰写过哪些基因,再加上有关先前的合著者和引文的信息,是否可以帮助我们预测该作者将来可能会撰写哪些新基因。以这种方式构建框架,问题就成为了预测作者与出版网络中的基因之间的联系之一。我们表明,这种仅基于社交网络的链接预测技术优于各种基线,包括那些仅依赖于非社交生物学信息的基线。

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