Tweet Stance Detection: A Two-stage DC-BILSTM Model Based on Semantic Attention

Yuanyu Yang, Bin Wu, Kai Zhao, Wenying Guo
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引用次数: 9

Abstract

Stance classification in tweet aims at detecting whether the author of the tweet is in FAVOR of, AGAINST, or NONE towards a pre-chosen target entity. Recently proposed Densely Connected BI-LSTM can effectively relieve overfitting and vanishing-gradient problems as well as dealing with long-term dependencies during multi-layer LSTM training. Based on this, we propose a two-stage deep attention neural network(T-DAN) for target-specific stance detection. This model employs densely connected BI-LSTM to encode tweet tokens and traditional bidirectional LSTM to encode target tokens. Besides, we decompose this ternary classification problem into two binary classification problems to mitigating the imbalanced distribution of labels. In the first stage, we find out the tweet is neutral or subjective about the specific target. In the second stage, we classify the stance of a given subjective tweet’s stance. Moreover, we propose a novel method of attention calculation based on the semantic similarity of tweet tokens and target tokens which can locate the crucial words related to target. Experimental results on English and Chinese datasets demonstrate that our proposed method surpasses some strong baselines and achieves the stateof-the-art performance.
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推文姿态检测:基于语义注意的两阶段DC-BILSTM模型
推文中的立场分类旨在检测推文的作者对预先选择的目标实体是赞成、反对还是反对。最近提出的密集连接BI-LSTM可以有效地解决多层LSTM训练过程中的过拟合和梯度消失问题,并处理长期依赖关系。在此基础上,我们提出了一种两阶段深度注意神经网络(T-DAN)用于目标特异性姿态检测。该模型采用密集连接的BI-LSTM对tweet令牌进行编码,采用传统的双向LSTM对目标令牌进行编码。此外,我们将这个三元分类问题分解为两个二元分类问题,以减轻标签分布的不平衡。在第一阶段,我们发现推文对特定目标是中立的或主观的。在第二阶段,我们对给定的主观推文的立场进行分类。此外,我们提出了一种基于推文标记和目标标记语义相似度的注意力计算方法,该方法可以定位与目标相关的关键字。在英文和中文数据集上的实验结果表明,我们提出的方法超越了一些强基线,达到了最先进的性能。
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