Learning from Elders: Making an LLM-powered Chatbot for Retirement Communities more Accessible through User-centered Design
Learning from Elders: Making an LLM-powered Chatbot for Retirement Communities more Accessible through User-centered Design
Low technology and eHealth literacy among older adults in retirement communities hinder engagement with digital tools. To address this, we designed an LLM-powered chatbot prototype using a human-centered approach for a local retirement community. Through interviews and persona development, we prioritized accessibility and dual functionality: simplifying internal information retrieval and improving technology and eHealth literacy. A pilot trial with residents demonstrated high satisfaction and ease of use, but also identified areas for further improvement. Based on the feedback, we refined the chatbot using GPT-3.5 Turbo and Streamlit. The chatbot employs tailored prompt engineering to deliver concise responses. Accessible features like adjustable font size, interface theme and personalized follow-up responses were implemented. Future steps include enabling voice-to-text function and longitudinal intervention studies. Together, our results highlight the potential of LLM-driven chatbots to empower older adults through accessible, personalized interactions, bridging literacy gaps in retirement communities.
Luna Xingyu Li、Ray-yuan Chung、Feng Chen、Wenyu Zeng、Yein Jeon、Oleg Zaslavsky
计算技术、计算机技术
Luna Xingyu Li,Ray-yuan Chung,Feng Chen,Wenyu Zeng,Yein Jeon,Oleg Zaslavsky.Learning from Elders: Making an LLM-powered Chatbot for Retirement Communities more Accessible through User-centered Design[EB/OL].(2025-04-11)[2025-06-17].https://arxiv.org/abs/2504.08985.点此复制
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