Context-Aware Multi-View Attention Networks for Emotion Cause Extraction

Xinglin Xiao, Penghui Wei, W. Mao, Lei Wang
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引用次数: 13

Abstract

Emotion cause extraction aims at automatically identifying cause clauses for a certain emotion expressed in a document. It is an important task in emotion analysis since it helps form a deeper understanding of emotion text. Detecting potential causes of user emotion in online contents is beneficial to public opinion monitoring, government decision-making, and other security-related applications. Existing studies treat this task as a binary clause-level classification problem, which considers each clause separately and omits the context information of clauses. Moreover, previous work only models emotion-dependent linguistic representations of clauses but ignores emotion-independent features in clauses including cause indicators. To address the above two issues, we formalize this task as a sequence labeling problem and propose the COntext-aware Multi-View attention networks (COMV) for emotion cause extraction. Our proposed model integrates context information and learns multi-view clause representations. Experimental results show that our model outperforms existing state-of-the-art methods.
基于上下文感知的多视角注意网络情感原因提取
情感原因提取的目的是自动识别文档中表达的某种情感的原因子句。它有助于对情感文本形成更深入的理解,是情感分析中的一项重要任务。检测网络内容中用户情绪的潜在原因有助于舆情监测、政府决策和其他与安全相关的应用。现有的研究将该任务视为二元分句级分类问题,即单独考虑每个分句,忽略分句的上下文信息。此外,以往的研究只对子句的情感依赖语言表征进行建模,而忽略了包括原因指示符在内的子句的情感独立特征。为了解决上述两个问题,我们将此任务形式化为序列标记问题,并提出了用于情感原因提取的上下文感知多视图注意网络(COMV)。我们提出的模型集成了上下文信息并学习了多视图子句表示。实验结果表明,我们的模型优于现有的最先进的方法。
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