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Automatic Identification and Classification of Noun Argument Structures in Biomedical Literature

机译:生物医学文献名词参数结构的自动识别和分类

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摘要

The accelerating increase in the biomedical literature makes keeping up with recent advances challenging for researchers thus making automatic extraction and discovery of knowledge from this vast literature a necessity. Building such systems requires automatic detection of lexico-semantic event structures governed by the syntactic and semantic constraints of human languages in sentences of biomedical texts. The lexico-semantic event structures in sentences are centered around the predicates and most semantic role labeling (SRL) approaches focus only on the arguments of verb predicates and neglect argument taking nouns which also convey information in a sentence. In this article, a noun argument structure (NAS) annotated corpus named BioNom and a SRL system to identify and classify these structures is introduced. Also, a genetic algorithm-based feature selection (GAFS) method is introduced and global inference is applied to significantly improve the performance of the NAS Bio SRL system.
机译:生物医学文献的加速增长使研究人员难以跟上最新进展,因此必须从大量文献中自动提取和发现知识。建立这样的系统需要自动检测生物医学文本句子中受人类语言的句法和语义约束支配的词汇语义事件结构。句子中的词汇语义事件结构以谓词为中心,大多数语义角色标记(SRL)方法仅关注动词谓词的论点,而忽略名词的论点也传递句子中的信息。在本文中,引入了一个名为BioNom的名词自变量结构(NAS)注释的语料库以及一个用于识别和分类这些结构的SRL系统。此外,还引入了基于遗传算法的特征选择(GAFS)方法,并应用了全局推断以显着提高NAS Bio SRL系统的性能。

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