In emotion recognition in conversation (ERC), the emotion of the current utterance is predicted by considering the previous context, which can be utilized in many natural language processing tasks. Although multiple emotions can coexist in a given sentence, most previous approaches take the perspective of a classification task to predict only a given label. However, it is expensive and difficult to label the emotion of a sentence with confidence or multi-label. In this paper, we automatically construct a grayscale label considering the correlation between emotions and use it for learning. That is, instead of using a given label as a one-hot encoding, we construct a grayscale label by measuring scores for different emotions. We introduce several methods for constructing grayscale labels and confirm that each method improves the emotion recognition performance. Our method is simple, effective, and universally applicable to previous systems. The experiments show a significant improvement in the performance of baselines.
翻译:在谈话中的情感识别(ERC)中,对当前语句的情绪作出预测时,考虑到以前的上下文,可以在许多自然语言处理任务中使用。虽然多个情感可以同时存在,但大多数先前的做法都从分类任务的角度出发,只预测给定的标签。然而,用自信或多标签标出句子的情绪既昂贵又困难。在本文中,我们自动建立一个灰度标签,考虑情感之间的相互关系,并将它用于学习。也就是说,我们不用使用某个标签作为一热编码,而是用测量不同情感的分数来构建灰度标签。我们引入了几种构建灰度标签的方法,并确认每种方法都提高了情感识别的性能。我们的方法简单、有效,并且普遍适用于以前的系统。实验显示,基线的性能有显著改进。