Learning-Based Strategy Design for Robot-Assisted Reminiscence Therapy Based on a Developed Model for People with Dementia
Fengpei Yuan, Ran Zhang, Dania Bilal, Xiaopeng Zhao

TL;DR
This paper develops a reinforcement learning-based conversation strategy for robot-assisted reminiscence therapy, using a simulation model of dementia patients to optimize engagement and emotional well-being during interactions.
Contribution
It introduces a novel simulation model of dementia patient responses and a revised Q-learning algorithm to personalize robot conversation strategies in therapy.
Findings
The strategy effectively adjusts prompt difficulty based on patient states.
It helps patients regain control and reduces conversation stress.
Simulation results confirm convergence and strategy efficacy.
Abstract
In this paper, the robot-assisted Reminiscence Therapy (RT) is studied as a psychosocial intervention to persons with dementia (PwDs). We aim at a conversation strategy for the robot by reinforcement learning to stimulate the PwD to talk. Specifically, to characterize the stochastic reactions of a PwD to the robot's actions, a simulation model of a PwD is developed which features the transition probabilities among different PwD states consisting of the response relevance, emotion levels and confusion conditions. A Q-learning (QL) algorithm is then designed to achieve the best conversation strategy for the robot. The objective is to stimulate the PwD to talk as much as possible while keeping the PwD's states as positive as possible. In certain conditions, the achieved strategy gives the PwD choices to continue or change the topic, or stop the conversation, so that the PwD has a sense of…
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Taxonomy
TopicsIdentity, Memory, and Therapy · Cognitive Functions and Memory · Social Robot Interaction and HRI
MethodsQ-Learning
