Stance Detection with Target and Target Towards Attention

Wenqiang Gao, Yujiu Yang, Yi Liu
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引用次数: 2

Abstract

We propose a Neural Stance Detection model with target and target towards attention mechanism. Stance detection is the task of classifying the attitude towards a given target. Even though a variety of recurrent neural networks have been used in stance detection problems, existing modes only take advantage of target information and ignore target towards information. What's more, these models tend to perform well when the text discusses the target explicitly. However, when the target is implicitly mentioned, these models are not good. To address this problem, we introduce Target and Target towards Attention mechanism which takes not only target but also target towards information into account. This paper considers the more challenging version of this task, where targets are not always mentioned and a specific test target has no training data available. Our model first builds a hierarchical Long Short Term Memory (LSTM)[1] model to represent sentence and text. And then, target and target towards information are considered via attention mechanism over different semantic levels. We conduct our experiment on SemEval-2016 Task 6 dataset. And the results show that our model outperforms several strong baselines.
有目标和目标朝向注意的姿态检测
提出了一种具有目标和目标注意机制的神经姿态检测模型。姿态检测是对给定目标的姿态进行分类。尽管已有多种递归神经网络用于姿态检测问题,但现有的模式只利用了目标信息而忽略了目标对信息。此外,当文本明确地讨论目标时,这些模型往往表现良好。然而,当隐含地提到目标时,这些模型就不太好了。为了解决这一问题,我们引入了目标和目标向注意机制,该机制不仅考虑了目标,而且考虑了目标向信息。本文考虑了该任务的更具挑战性的版本,其中目标并不总是被提及,并且特定的测试目标没有可用的训练数据。我们的模型首先建立了一个分层的长短期记忆(LSTM)[1]模型来表示句子和文本。然后,在不同的语义层次上,通过注意机制考虑目标和对信息的目标。我们在SemEval-2016 Task 6数据集上进行实验。结果表明,我们的模型优于几个强基线。
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