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Temporal relation classification with deep neural network

机译:深度神经网络的时间关系分类

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We proposed neural network architecture based on Convolution Neural Network(CNN) for temporal relation classification in sentence. First, we transformed word into vector by using word embedding. In Feature Extraction, we extracted two type of features. Lexical level feature considered meaning of marked entity and Sentence level feature considered context of the sentence. Window processing was used to reflect local context and Convolution and Max-pooling operation were used for global context. We concatenated both feature vectors and used softmax operation to compute confidence score. Because experiment results didn't outperform the state-of-the-art methods, we suggested some future works to do.
机译:提出了基于卷积神经网络(CNN)的神经网络体系结构,用于句子的时间关系分类。首先,我们通过词嵌入将词转化为向量。在特征提取中,我们提取了两种类型的特征。词汇级特征考虑了标记实体的含义,句子级特征考虑了句子的上下文。窗口处理用于反映局部上下文,而卷积和最大池操作用于全局上下文。我们将两个特征向量连接起来,并使用softmax运算来计算置信度得分。由于实验结果并未超过最新技术,因此我们建议做一些未来的工作。

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