A schema-guided approach to dialogue management has been shown in recent work to be effective in creating robust customizable virtual agents capable of acting as friendly peers or task assistants. However, successful applications of these methods in open-ended, mixed-initiative domains remain elusive -- particularly within medical domains such as virtual standardized patients, where such complex interactions are commonplace -- and require more extensive and flexible dialogue management capabilities than previous systems provide. In this paper, we describe a general-purpose schema-guided dialogue management framework used to develop SOPHIE, a virtual standardized cancer patient that allows a doctor to conveniently practice for interactions with patients. We conduct a crowdsourced evaluation of conversations between medical students and SOPHIE. Our agent is judged to produce responses that are natural, emotionally appropriate, and consistent with her role as a cancer patient. Furthermore, it significantly outperforms an end-to-end neural model fine-tuned on a human standardized patient corpus, attesting to the advantages of a schema-guided approach.
翻译:最近的工作表明,对话管理采用一种以计划为指南的方法,在创建能够作为友好同侪或任务助理的强有力的定制虚拟代理物方面是行之有效的,然而,在开放和混合倡议领域成功应用这些方法仍然难以实现 -- -- 特别是在医疗领域,例如虚拟标准化病人,这种复杂的互动是常见的 -- -- 需要比以往系统更广泛和灵活的对话管理能力。本文描述了用于开发SOPHIE的通用模式指导对话管理框架,SOPHIE是一个虚拟标准化癌症病人,使医生能够方便地与病人互动。我们对医科学生和SOPHIE之间的谈话进行由多方来源的评估。我们的代理物被判定为自然的、情感上适当的、与她作为癌症病人的角色相一致的应对措施。此外,它大大超越了对人体标准化病人身体进行端到端微调的神经模型,证明了SAPHIE的优点。