The task of empathetic response generation aims to understand what feelings a speaker expresses on his/her experiences and then reply to the speaker appropriately. To solve the task, it is essential to model the content-emotion duality of a dialogue, which is composed of the content view (i.e., what personal experiences are described) and the emotion view (i.e., the feelings of the speaker on these experiences). To this end, we design a framework to model the Content-Emotion Duality (CEDual) via disentanglement for empathetic response generation. With disentanglement, we encode the dialogue history from both the content and emotion views, and then generate the empathetic response based on the disentangled representations, thereby both the content and emotion information of the dialogue history can be embedded in the generated response. The experiments on the benchmark dataset EMPATHETICDIALOGUES show that the CEDual model achieves state-of-the-art performance on both automatic and human metrics, and it also generates more empathetic responses than previous methods.
翻译:为解决问题,必须将对话历史与内容和情感观点混为一谈,然后根据混乱的表达方式产生同情性反应,因此对话历史的内容和情感信息可以嵌入生成的响应中。关于基准数据集EMPACTITICDIALOGUES的实验表明,CEDual模型在自动和人文衡量方法上都取得了最先进的表现,它也产生了比以往更多的同情性反应。