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Incorporating Image Matching Into Knowledge Acquisition for Event-Oriented Relation Recognition

机译:将图像匹配纳入知识获取以获取事件导向的关系识别

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Event relation recognition is a challenging language processing task. It is required to determine the relation class of a pair of query events, such as causality, under the condition that there isn't any reliable clue for use. We follow the traditional statistical approach in this paper, speculating the relation class of the target events based on the relation-class distributions on the similar events. There is minimal supervision used during the speculation process. In particular, we incorporate image processing into the acquisition of similar event instances, including the utilization of images for visually representing event scenes, and the use of the neural network based image matching for approximate calculation between events. We test our method on the ACE-R2 corpus and compare it with the fully-supervised neural network models. Experimental results show that we achieve a comparable performance to CNN while slightly better than LSTM.
机译:事件关系识别是一个充满挑战的语言处理任务。需要确定一对查询事件的关系类,例如因果关系,条件下没有任何可靠的线索。我们在本文中遵循传统的统计方法,根据类似事件的关系类分布拨出目标事件的关系类。在猜测过程中使用了最小的监督。具体地,我们将图像处理纳入类似的事件实例的获取,包括利用用于视觉上表示事件场景的图像,以及使用基于神经网络的图像匹配以进行事件之间的近似计算。我们在ACE-R2语料库上测试我们的方法,并将其与完全监督的神经网络模型进行比较。实验结果表明,我们对CNN实现了相当的性能,而略高于LSTM。

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