事件特性和事件嵌入增强的事件检测

Xin Shi, Xiaoyang Zeng, Jie Wu, Mengshu Hou, Hao Zhu
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引用次数: 0

摘要

从文本中提取有价值的信息一直是研究的热点,事件检测是信息提取的重要子任务。大多数现有的事件检测方法只关注句子级信息,没有考虑不同事件类型之间的相关性。为了解决这些问题,本文提出了一种新的基于预训练语言模型的事件检测框架CFEE,该框架利用文档级信息和事件相关性来增强事件检测任务。为了获得事件相关性,我们通过Skip-gram模型将所有事件类型投影到共享语义空间中,其中事件相关性可以表示为事件嵌入之间的距离。为了捕获文档级信息,我们利用双向递归神经网络融合上下文信息。在ACE2005数据集上的实验表明,我们的模型优于大多数现有的方法,也证明了事件关联和文档级信息的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Context Event Features and Event Embedding Enhanced Event Detection
Extracting valuable information from text has always been a hot point for research and event detection is an essential subtask of information extraction. Most existing methods of event detection only focus on sentence-level information and do not consider the correlation between different event types. To address these problems, in this paper, we propose a novel pre-trained language model based event detection framework named CFEE that utilizes document-level information and event correlation to enhance the event detection task. To obtain event correlation, we project all event types into a shared semantic space through a Skip-gram model, where the event correlation can be represented as the distance between event embeddings. In order to capture document-level information, we utilize a bidirectional recurrent neural network to fuse the context information. Experiments on the ACE2005 dataset demonstrate that our proposed model is better than most existing methods, and also demonstrate the effectiveness of event correlation and document-level information.
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