论文标题
善解人意的对话系统:对当前进步,差距和机遇的综述
Empathetic Conversational Systems: A Review of Current Advances, Gaps, and Opportunities
论文作者
论文摘要
移情是有助于相互理解和共同解决问题的至关重要因素。近年来,越来越多的研究认识到同理心的好处,并开始将同理心纳入会话系统。我们将此主题称为善解人意的对话系统。为了确定该主题中的关键差距和未来机会,本文使用五个审查维度来研究了这一快速增长的领域:(i)概念性的移情模型和框架,(ii)采用与移情相关的概念,(iii)数据集和算法技术开发了,(iv)评估策略和(v)状态途径。研究结果表明,大多数研究都集中在促进性数据集的使用上,基于文本的模式主导了该领域的研究。研究主要集中于从用户和对话系统的消息中提取功能,并最少强调用户建模和分析。值得注意的是,在响应生成模型中结合了情绪原因,外部知识和影响匹配的研究取得了明显的更好结果。为了在不同的现实世界中实施,我们建议将来的研究应解决在实体层面检测和认证情绪领域的关键差距,处理多模式输入,显示更多细微的促进行为,并包含其他对话系统功能。
Empathy is a vital factor that contributes to mutual understanding, and joint problem-solving. In recent years, a growing number of studies have recognized the benefits of empathy and started to incorporate empathy in conversational systems. We refer to this topic as empathetic conversational systems. To identify the critical gaps and future opportunities in this topic, this paper examines this rapidly growing field using five review dimensions: (i) conceptual empathy models and frameworks, (ii) adopted empathy-related concepts, (iii) datasets and algorithmic techniques developed, (iv) evaluation strategies, and (v) state-of-the-art approaches. The findings show that most studies have centered on the use of the EMPATHETICDIALOGUES dataset, and the text-based modality dominates research in this field. Studies mainly focused on extracting features from the messages of the users and the conversational systems, with minimal emphasis on user modeling and profiling. Notably, studies that have incorporated emotion causes, external knowledge, and affect matching in the response generation models, have obtained significantly better results. For implementation in diverse real-world settings, we recommend that future studies should address key gaps in areas of detecting and authenticating emotions at the entity level, handling multimodal inputs, displaying more nuanced empathetic behaviors, and encompassing additional dialogue system features.