A simulated experiment to explore robotic dialogue strategies for people with dementia.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Fengpei Yuan, Amir Sadovnik, Ran Zhang, Devin Casenhiser, Eun Jin Paek, Xiaopeng Zhao
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引用次数: 4

Abstract

Introduction: Persons with dementia (PwDs) often show symptoms of repetitive questioning, which brings great burdens on caregivers. Conversational robots hold promise of helping cope with PwDs' repetitive behavior. This paper develops an adaptive conversation strategy to answer PwDs' repetitive questions, follow up with new questions to distract PwDs from repetitive behavior, and stimulate their conversation and cognition.

Methods: We propose a general reinforcement learning model to interact with PwDs with repetitive questioning. Q-learning is exploited to learn adaptive conversation strategy (from the perspectives of rate and difficulty level of follow-up questions) for four simulated PwDs. A demonstration is presented using a humanoid robot.

Results: The designed Q-learning model performs better than random action selection model. The RL-based conversation strategy is adaptive to PwDs with different cognitive capabilities and engagement levels. In the demonstration, the robot can answer a user's repetitive questions and further come up with a follow-up question to engage the user in continuous conversations.

Conclusions: The designed Q-learning model demonstrates noteworthy effectiveness in adaptive action selection. This may provide some insights towards developing conversational social robots to cope with repetitive questioning by PwDs and increase their quality of life.

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一个模拟实验,探索痴呆症患者的机器人对话策略。
导读:痴呆症患者经常表现出重复提问的症状,这给照顾者带来了很大的负担。对话机器人有望帮助处理残疾人的重复性行为。本文开发了一种自适应对话策略来回答残疾人的重复问题,并跟进新的问题来分散残疾人的重复行为,并刺激他们的对话和认知。方法:我们提出了一个通用的强化学习模型来与重复提问的残疾人进行交互。利用Q-learning对四个模拟残疾人的自适应对话策略(从后续问题的比率和难度水平的角度)进行学习。用一个人形机器人进行了演示。结果:所设计的q学习模型优于随机行动选择模型。基于强化学习的会话策略适用于不同认知能力和参与水平的残疾人士。在演示中,机器人可以回答用户重复的问题,并进一步提出一个后续问题,与用户进行持续的对话。结论:所设计的q -学习模型在自适应行为选择中具有显著的有效性。这可能为开发会话社交机器人提供一些见解,以应对残疾人的重复提问,提高他们的生活质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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