Examining AI Methods for Micro-Coaching Dialogs.

Elliot G Mitchell, Noémie Elhadad, Lena Mamykina
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引用次数: 5

Abstract

Conversational interaction, for example through chatbots, is well-suited to enable automated health coaching tools to support self-management and prevention of chronic diseases. However, chatbots in health are predominantly scripted or rule-based, which can result in a stagnant and repetitive user experience in contrast with more dynamic, data-driven chatbots in other domains. Consequently, little is known about the tradeoffs of pursuing data-driven approaches for health chatbots. We examined multiple artificial intelligence (AI) approaches to enable micro-coaching dialogs in nutrition - brief coaching conversations related to specific meals, to support achievement of nutrition goals - and compared, reinforcement learning (RL), rule-based, and scripted approaches for dialog management. While the data-driven RL chatbot succeeded in shorter, more efficient dialogs, surprisingly the simplest, scripted chatbot was rated as higher quality, despite not fulfilling its task as consistently. These results highlight tensions between scripted and more complex, data-driven approaches for chatbots in health.

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研究微教练对话的AI方法。
会话互动,例如通过聊天机器人,非常适合启用自动化健康指导工具,以支持自我管理和预防慢性疾病。然而,医疗领域的聊天机器人主要是基于脚本或规则的,这可能导致停滞和重复的用户体验,而其他领域的聊天机器人则更动态,更受数据驱动。因此,人们对健康聊天机器人采用数据驱动方法的权衡知之甚少。我们研究了多种人工智能(AI)方法来实现营养中的微指导对话——与特定膳食相关的简短指导对话,以支持营养目标的实现——并比较了强化学习(RL)、基于规则的和脚本化的对话管理方法。虽然数据驱动的强化学习聊天机器人在更短、更有效的对话中取得了成功,但令人惊讶的是,最简单的脚本聊天机器人被评为质量更高,尽管它没有始终如一地完成任务。这些结果突显了医疗领域聊天机器人脚本化和更复杂、数据驱动的方法之间的紧张关系。
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