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Exploiting Contextual Information via Dynamic Memory Network for Event Detection

2018-10-03 08:43:11
Shaobo Liu, Rui Cheng, Xiaoming Yu, Xueqi Cheng

Abstract

The task of event detection involves identifying and categorizing event triggers. Contextual information has been shown effective on the task. However, existing methods which utilize contextual information only process the context once. We argue that the context can be better exploited by processing the context multiple times, allowing the model to perform complex reasoning and to generate better context representation, thus improving the overall performance. Meanwhile, dynamic memory network (DMN) has demonstrated promising capability in capturing contextual information and has been applied successfully to various tasks. In light of the multi-hop mechanism of the DMN to model the context, we propose the trigger detection dynamic memory network (TD-DMN) to tackle the event detection problem. We performed a five-fold cross-validation on the ACE-2005 dataset and experimental results show that the multi-hop mechanism does improve the performance and the proposed model achieves best $F_1$ score compared to the state-of-the-art methods.

Abstract (translated)

URL

https://arxiv.org/abs/1810.03449

PDF

https://arxiv.org/pdf/1810.03449.pdf


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