Biomedical Event Extraction as Multi-turn Question Answering

Xinglong Wang, Leon Weber, U. Leser
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引用次数: 22

Abstract

Biomedical event extraction from natural text is a challenging task as it searches for complex and often nested structures describing specific relationships between multiple molecular entities, such as genes, proteins, or cellular components. It usually is implemented by a complex pipeline of individual tools to solve the different relation extraction subtasks. We present an alternative approach where the detection of relationships between entities is described uniformly as questions, which are iteratively answered by a question answering (QA) system based on the domain-specific language model SciBERT. This model outperforms two strong baselines in two biomedical event extraction corpora in a Knowledge Base Population setting, and also achieves competitive performance in BioNLP challenge evaluation settings.
基于多回合问答的生物医学事件提取
从自然文本中提取生物医学事件是一项具有挑战性的任务,因为它搜索描述多个分子实体(如基因、蛋白质或细胞成分)之间特定关系的复杂且通常嵌套的结构。它通常由复杂的工具管道实现,以解决不同的关系提取子任务。我们提出了一种替代方法,其中实体之间关系的检测被统一描述为问题,这些问题由基于领域特定语言模型SciBERT的问答(QA)系统迭代回答。该模型在知识库人口设置的两个生物医学事件提取语料库中优于两个强基线,并且在BioNLP挑战评估设置中也达到了具有竞争力的性能。
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