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Use of “Internal Knowledge”: Biomedical Literature Search Liberated From External Resources

机译:使用“内部知识”:从外部资源解放生物医学文献搜索

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Knowledge plays an essential role in biomedical literature search (BLS) systems, filling the semantic gap between queries and documents. Knowledge bases, constructed by human experts or machine learning methods, are generally regarded as the main sources serving external knowledge. However, a good knowledge base must balances its particularity and generalization, resulting limited knowledge coverage and utilization to BLS systems. Considering massive documents in a BLS system, and recently developing Open IE techniques by which we can automatically extract structured knowledge from documents, how about harnessing distilled internal knowledge rather than external knowledge to conduct BLS systems? Internal knowledge, providing tailored particular knowledge to BLS systems, is supposed to lead better knowledge utilization and much more competitive performance on literature search. In this paper, we design an novel internal knowledge driven BLS system upon a Multi-layered Encoders incorporating Multi-layered internal Knowledge graph, called MEMK. MEMK harnesses distilled internal structural knowledge, empowering interactive representations learning of query and documents. The experiments show that MEMK outperforms strong baselines on a public benchmark, and internal knowledge based query expansion can further improve the performance to a new state of the art.
机译:知识在生物医学文献搜索(BLS)系统中发挥着重要作用,填补了查询和文档之间的语义差距。由人体专家或机器学习方法构建的知识库通常被认为是服务外部知识的主要来源。然而,良好的知识库必须平衡其特殊性和泛化,从而使知识覆盖率有限和利用到BLS系统。考虑到BLS系统中的大规模文档,最近开发开放的IE技术,我们可以自动从文档中提取结构化知识,如何利用蒸馏内部知识而不是外部知识来进行BLS系统?内部知识,为BLS系统提供量身定制的特殊知识,应该在文献搜索中引发更好的知识利用和更具竞争力的表现。在本文中,我们在包含多层内部知识图的多层编码器上设计了一种新颖的内部知识驱动的BLS系统,称为MEMK。 Memk Limstes蒸馏内部结构知识,赋予互动表示查询和文件的互动表示。实验表明,MEMK优于公共基准的强大基准,基于内部知识的查询扩展可以进一步提高对新技术的性能。

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