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A Sequential Model for Classifying Temporal Relations between Intra-Sentence Events

机译:判断句子内事件之间的时间关系的顺序模型

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We present a sequential model for temporal relation classification between intrasentence events. The key observation is that the overall syntactic structure and compositional meanings of the multi-word context between events are important for distinguishing among fine-grained temporal relations. Specifically, our approach first extracts a sequence of context words that indicates the temporal relation between two events, which well align with the dependency path between two event mentions The context word sequence, together with a parts-of-speech tag sequence and a dependency relation sequence that are generated corresponding to the word sequence, are then provided as input to bidirectional recurrent neural network (LSTM) models The neural nets learn compositional syntactic and semantic representations of contexts surrounding the two events and predict the temporal relation between them. Evaluation of the proposed approach on TimeBank corpus shows that sequential modeling is capable of accurately recognizing temporal relations between events, which outperforms a neural net model using various discrete features as input that imitates previous feature based models.
机译:我们为intrasence事件之间的时间关系分类提供了一个顺序模型。关键观察是,事件之间的多字语境的整体句法结构和组成含义对于区分细粒度的时间关系是重要的。具体而言,我们的方法首先提取一系列上下文词汇,该语言词汇表指示了两个事件之间的时间关系,它与两个事件之间的依赖路径良好对齐,与上下文字序列一起以及语音标签序列和依赖关系关系然后将与单词序列相对应的序列被提供为向双向复发性神经网络(LSTM)的输入提供神经网络的模型学习两个事件周围的上下文的组成句法和语义表示,并预测它们之间的时间关系。评估所提出的TimeBank语料库的方法表明,顺序建模能够准确地识别事件之间的时间关系,这优于使用各种离散特征作为模仿基于特征的模型的输入来表达神经网络模型。

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