Event extraction (EE) is an essential task of information extraction, which aims to extract structured event information from unstructured text. Most prior work focuses on extracting flat events while neglecting overlapped or nested ones. A few models for overlapped and nested EE includes several successive stages to extract event triggers and arguments,which suffer from error propagation. Therefore, we design a simple yet effective tagging scheme and model to formulate EE as word-word relation recognition, called OneEE. The relations between trigger or argument words are simultaneously recognized in one stage with parallel grid tagging, thus yielding a very fast event extraction speed. The model is equipped with an adaptive event fusion module to generate event-aware representations and a distance-aware predictor to integrate relative distance information for word-word relation recognition, which are empirically demonstrated to be effective mechanisms. Experiments on 3 overlapped and nested EE benchmarks, namely FewFC, Genia11, and Genia13, show that OneEE achieves the state-of-the-art (SOTA) results. Moreover, the inference speed of OneEE is faster than those of baselines in the same condition, and can be further substantially improved since it supports parallel inference.
翻译:事件提取( EE) 是信息提取的基本任务, 目的是从无结构文本中提取结构化事件信息。 大多数先前的工作侧重于提取平板事件, 忽略重叠或嵌套的事件。 一些重叠和嵌套的 EE 模式包括几个连续的阶段来提取事件触发器和争论, 这些触发器和争论因错误传播而受到影响。 因此, 我们设计了一个简单而有效的标记办法和模型, 将 EE 设计为文字关系识别, 称为 OneEE 。 触发词或争论词之间的关系同时在一个阶段与平行的网格标记同时得到承认, 从而产生非常快速的事件提取速度 。 该模型配备了一个适应性事件集成模块, 以生成事件觉悟表和远程感知预测器, 将相对的距离信息整合到字词关系识别中, 实证地证明这是有效的机制 。 对三个重叠和嵌套的 EE 基准的实验, 即 ForfFC, Genia11 和 Genia13 显示 OneEE 的实验显示, 获得的状态定位速度比基线要快得多, 。 此外, 一个EEE 的推, 的推推速度比它在平行状态下可以进一步支持。