生物NLP信息提取的混合选区依赖解析器

K. Taha, M. Alzaabi
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引用次数: 1

摘要

生物自然语言处理(NLP)的关键目标之一是从生物医学出版物中自动提取信息。大多数当前的选区和依赖解析器都忽略了组成句子的成分之间的语义关系,可能不太适合捕获复杂的长距离依赖关系。本文提出了一种用于生物NLP信息提取的混合选区依赖解析器BioHCDP。BioHCDP旨在通过应用新颖的语言计算技术来提高生物文本挖掘的技术水平,这些技术克服了上述现有的成分和依赖解析器的局限性,具体如下:(1)它使用新颖的语义规则确定句子中每对成分之间的语义关系;(2)它应用语义关系提取模型来表示不同上下文中不同使用模式的关系。BioHCDP可用于从生物学文本中提取各种类型的数据,包括蛋白质功能分配、遗传网络和蛋白质-蛋白质相互作用。我们将BioHCDP与三种体系进行了实验比较。结果显示明显改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BioHCDP: A Hybrid Constituency-Dependency Parser for Biological NLP information extraction
One of the key goals of biological Natural Language Processing (NLP) is the automatic information extraction from biomedical publications. Most current constituency and dependency parsers overlook the semantic relationships between the constituents comprising a sentence and may not be well suited for capturing complex long-distance dependencies. We propose in this paper a hybrid constituency-dependency parser for biological NLP information extraction called BioHCDP. BioHCDP aims at enhancing the state of the art of biological text mining by applying novel linguistic computational techniques that overcome the limitations of current constituency and dependency parsers outlined above, as follows: (1) it determines the semantic relationship between each pair of constituents in a sentence using novel semantic rules, and (2) it applies semantic relationship extraction models that represent the relationships of different patterns of usage in different contexts. BioHCDP can be used to extract various classes of data from biological texts, including protein function assignments, genetic networks, and protein-protein interactions. We compared BioHCDP experimentally with three systems. Results showed marked improvement.
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