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A Search-based Neural Model for Biomedical Nested and Overlapping Event Detection

机译:基于生物医学嵌套和重叠事件检测的基于搜索神经模型

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We tackle the nested and overlapping event detection task and propose a novel search-based neural network (SBNN) structured prediction model that treats the task as a search problem on a relation graph of trigger-argument structures. Unlike existing structured prediction tasks such as dependency parsing, the task targets to detect DAG structures, which constitute events, from the relation graph. We define actions to construct events and use all the beams in a beam search to detect all event structures that may be overlapping and nested. The search process constructs events in a bottom-up manner while modelling the global properties for nested and overlapping structures simultaneously using neural networks. We show that the model achieves performance comparable to the state-of-the-art model Turku Event Extraction System (TEES) on the BioNLP Cancer Genetics (CG) Shared Task 2013 without the use of any syntactic and hand-engineered features. Further analyses on the development set show that our model is more computationally efficient while yielding higher F1-score performance.
机译:我们处理的嵌套和重叠的事件检测的任务,提出了一种新的基于搜索的神经网络(SBNN)结构化预测模型,该模型对待任务作为触发参数的结构的关系图的检索问题。不像现有的结构预测的任务,如依存分析,任务目标,以检测DAG结构,其构成的事件,从关系图。我们定义构建的事件,使用所有的束搜索光束,以检测可能是重叠和嵌套的所有事件结构的动作。搜索过程构建事件在自底向上的方式而建模为嵌套的全局属性和用神经网络同时重叠结构。我们表明,该模型达到性能相媲美的国家的最先进的模型图尔库事件抽取系统(TEES)在BioNLP癌症遗传学(CG)共享任务2013,而无需使用任何语法和手工设计的特点。在开发的一套节目,我们的模型在计算上更高效,同时更高收益F1-得分性能进一步的分析。

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