Emotional support is a crucial ability for many conversation scenarios, including social interactions, mental health support, and customer service chats. Following reasonable procedures and using various support skills can help to effectively provide support. However, due to the lack of a well-designed task and corpora of effective emotional support conversations, research on building emotional support into dialog systems remains untouched. In this paper, we define the Emotional Support Conversation (ESC) task and propose an ESC Framework, which is grounded on the Helping Skills Theory. We construct an Emotion Support Conversation dataset (ESConv) with rich annotation (especially support strategy) in a help-seeker and supporter mode. To ensure a corpus of high-quality conversations that provide examples of effective emotional support, we take extensive effort to design training tutorials for supporters and several mechanisms for quality control during data collection. Finally, we evaluate state-of-the-art dialog models with respect to the ability to provide emotional support. Our results show the importance of support strategies in providing effective emotional support and the utility of ESConv in training more emotional support systems.
翻译:情感支持是许多对话情景的关键能力,包括社交互动、心理健康支持和客户服务聊天。遵循合理的程序并使用各种支持技能可以帮助有效提供支持。然而,由于缺乏设计周密的任务和有效情感支持对话的整体体,关于将情感支持纳入对话系统的研究依然没有触及。在本文中,我们定义情感支持对话的任务,并提议一个基于帮助技能理论的ESSC框架。我们以帮助寻求者和支持者的方式构建一个情感支持对话数据集(特别是支持战略),其内容丰富。为确保一系列高质量的对话提供有效的情感支持的范例,我们广泛努力为支持者设计辅导课程,并在数据收集过程中设计若干质量控制机制。最后,我们评估提供情感支持的能力方面的最新对话模式。我们的成果表明支持战略在提供有效的情感支持方面的重要性,以及ESConv在培训更多的情感支持系统方面的重要性。