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Identifying Chinese Event Factuality with Convolutional Neural Networks

机译:用卷积神经网络识别中国事件的事实性

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Event factuality describes the factual level of the event expressed by event narrator and is one of the deep semantic representations of natural texts. This paper focuses on identifying Chinese event factuality and proposes an effective approach based on CNN (Convolutional Neural Networks). It extracts factual related information from event sentences and then regards them and their transformation as features. Meanwhile, it transfers the features to word vectors to construct a sentence-level word vector map. Finally, it inputs the word vector map to the CNN model to identify event factuality. Experimental results show that our approach achieves a higher performance by using factual features and CNN model, especially the advantage to tackle the imbalanced data distribution problem.
机译:事件事实性描述了事件叙述者表达的事件的事实水平,并且是自然文本的深层语义表示之一。本文着重于识别中国事件的真实性,并提出了一种基于CNN(卷积神经网络)的有效方法。它从事件语句中提取与事实相关的信息,然后将其及其转换视为特征。同时,将特征转移到单词向量上以构建句子级单词向量图。最后,它将单词向量图输入到CNN模型中以识别事件事实性。实验结果表明,我们的方法通过使用事实特征和CNN模型获得了更高的性能,尤其是解决了数据分配不平衡问题的优势。

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