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EmoChannelAttn: Exploring Emotional Construction Towards Multi-Class Emotion Classification

机译:Emochannelattn:探索多级情感分类的情绪建设

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The current multi-class emotion classification studies mainly focus on enhancing word-level and sentence-level semantical and sentimental features by exploiting hand-crafted lexicon dictionaries. In comparison, very limited studies attempt to achieve emotion classification task from the emotion-level perspectives, which are to understand how the emotion of a sentence is constructed. Another limitation of existing works is that they assumed that emotion labels are relatively independent, neglecting the possible relations among different types of emotions. Therefore, in this work, we aim to explore various fine-grained emotions based on domain knowledge to understand the construction details of emotions and the interconnection among emotions. To address the first issue, we propose a novel method named EmoChannel to capture the intensity variation of a particular emotion in time series by incorporating domain knowledge and dimensional sentiment lexicons. The resulting information of 151 available fine-grained emotions is utilized to comprise the sentence-level emotion construction. As for the second issue, we introduce the EmoChannelAttn Network to identify the dependency relationship within all emotions via attention mechanism to enhance emotion classification performance. Our experiments demonstrate that the proposed method gains significant improvements compared with baseline models on several multi-class datasets.
机译:目前的多级情感分类研究主要集中在利用手工制作的词典词典来增强词语水平和句子级语义和多愁善感特征。相比之下,非常有限的研究试图从情感层面的角度来实现情绪分类任务,这是为了了解句子的情绪是如何构建的。对现有作品的另一个限制是他们认为情绪标签相对独立,忽视不同类型情绪之间的可能关系。因此,在这项工作中,我们的目标是根据领域知识探索各种细粒度的情绪,以了解情绪的施工细节和情绪之间的互连。为了解决第一个问题,我们提出了一种名为Emochannel的新方法,通过结合域知识和维度情绪词典来捕获时间序列中特定情绪的强度变化。由此产生的151种可用细粒度情绪的信息被利用来包括句子级的情感建设。至于第二个问题,我们介绍了Emochannelattn网络,通过注意机制来识别所有情绪中的依赖关系,以提高情感分类性能。我们的实验表明,与几个多级数据集上的基线模型相比,所提出的方法提高了显着的改进。

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