Each utterance in multi-turn empathetic dialogues has features such as emotion, keywords, and utterance-level meaning. Feature transitions between utterances occur naturally. However, existing approaches fail to perceive the transitions because they extract features for the context at the coarse-grained level. To solve the above issue, we propose a novel approach of recognizing feature transitions between utterances, which helps understand the dialogue flow and better grasp the features of utterance that needs attention. Also, we introduce a response generation strategy to help focus on emotion and keywords related to appropriate features when generating responses. Experimental results show that our approach outperforms baselines and especially, achieves significant improvements on multi-turn dialogues.
翻译:多转式同情性对话中的每个语句都有情感、关键词和发音层次含义等特征。 语句之间的特质转换自然发生。 但是,现有的方法无法理解这些转型, 因为它们在粗粗的语系中提取了背景特征。 为了解决上述问题, 我们建议一种新颖的方法, 承认语句之间的特质过渡, 这有助于理解对话流, 更好地掌握需要注意的语句特征。 此外, 我们引入了反应生成战略, 帮助在生成响应时关注与适当特征有关的情感和关键词。 实验结果显示, 我们的方法超过了基线, 特别是, 在多方向对话上取得了显著的改进 。