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A generalizable NLP framework for fast development of pattern-based biomedical relation extraction systems

机译:用于快速开发基于模式的生物医学关系提取系统的通用NLP框架

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摘要

BackgroundText mining is increasingly used in the biomedical domain because of its ability to automatically gather information from large amount of scientific articles. One important task in biomedical text mining is relation extraction, which aims to identify designated relations among biological entities reported in literature. A relation extraction system achieving high performance is expensive to develop because of the substantial time and effort required for its design and implementation. Here, we report a novel framework to facilitate the development of a pattern-based biomedical relation extraction system. It has several unique design features: (1) leveraging syntactic variations possible in a language and automatically generating extraction patterns in a systematic manner, (2) applying sentence simplification to improve the coverage of extraction patterns, and (3) identifying referential relations between a syntactic argument of a predicate and the actual target expected in the relation extraction task.
机译:BackgroundText挖掘由于能够自动从大量科学文章中收集信息的能力而越来越多地用于生物医学领域。关系提取是生物医学文本挖掘中的一项重要任务,其目的是识别文献中报道的生物实体之间的指定关系。由于高性能的关系提取系统的设计和实现需要大量的时间和精力,因此开发该系统的开发成本很高。在这里,我们报告一个新颖的框架,以促进基于模式的生物医学关系提取系统的发展。它具有几个独特的设计功能:(1)利用语言中可能出现的语法变化并以系统的方式自动生成提取模式;(2)应用句子简化以提高提取模式的覆盖范围;(3)识别谓词的句法参数和关系提取任务中期望的实际目标。

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