Event extraction is typically modeled as a multi-class classification problem where both event types and argument roles are treated as atomic symbols. These approaches are usually limited to a set of pre-defined types. We propose a novel event extraction framework that takes event types and argument roles as natural language queries to extract candidate triggers and arguments from the input text. With the rich semantics in the queries, our framework benefits from the attention mechanisms to better capture the semantic correlation between the event types or argument roles and the input text. Furthermore, the query-and-extract formulation allows our approach to leverage all available event annotations from various ontologies as a unified model. Experiments on two public benchmarks, ACE and ERE, demonstrate that our approach achieves state-of-the-art performance on each dataset and significantly outperforms existing methods on zero-shot event extraction. We will make all the programs publicly available once the paper is accepted.
翻译:事件提取通常是一个多级分类问题,其中事件类型和争论作用都被视为原子符号。这些方法通常限于一套预先界定的类型。我们提议了一个新的事件提取框架,将事件类型和争论作用作为自然语言查询,从输入文本中提取候选触发和争论。由于查询中的语义丰富,我们的框架受益于关注机制,以更好地捕捉事件类型或争论作用与输入文本之间的语义相关性。此外,查询和提取方式使我们能够利用所有来自各种本体的可用事件说明作为统一的模型。关于两个公共基准ACE和ERE的实验表明,我们的方法在每一个数据集上都取得了最先进的表现,大大超越了零点事件提取的现有方法。一旦被接受,我们将公布所有程序。