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Leveraging Multi-head Attention Mechanism to Improve Event Detection

机译:利用多头注意力机制改善事件检测

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Event detection (ED) task aims to automatically identify trigger words from unstructured text. In recent years, neural models with attention mechanism have achieved great success on this task. However, existing attention methods tend to focus on meaningless context words and ignore the semantically rich words, which weakens their ability to recognize trigger words. In this paper, we propose MANN, a multi-head attention mechanism model enhanced by argument knowledge to address the above issues. The multi-head mechanism gives MANN the ability to detect a variety of information in a sentence while argument knowledge acts as a supervisor to further improve the quality of attention. Experimental results show that our approach is significantly superior to existing attention-based models.
机译:事件检测(ED)任务旨在自动从非结构化文本中识别触发词。近年来,具有注意力机制的神经模型在该任务上取得了巨大的成功。但是,现有的注意方法倾向于将重点放在无意义的上下文单词上,而忽略了语义丰富的单词,这削弱了它们识别触发单词的能力。在本文中,我们提出了MANN,一种通过辩论知识增强的多头注意力机制模型来解决上述问题。多头机制使MANN能够检测句子中的各种信息,而论点知识可以充当监督者,从而进一步提高注意力质量。实验结果表明,我们的方法明显优于现有的基于注意力的模型。

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