Empowering Older Adults in Digital Technology Use with Foundation Models
- URL: http://arxiv.org/abs/2601.10018v1
- Date: Thu, 15 Jan 2026 03:00:59 GMT
- Title: Empowering Older Adults in Digital Technology Use with Foundation Models
- Authors: Hasti Sharifi, Homaira Huda Shomee, Sourav Medya, Debaleena Chattopadhyay,
- Abstract summary: Technology support can assist older adults in using digital applications.<n>Many struggle to articulate their issues due to unfamiliarity with technical terminology and age-related cognitive changes.<n>This study examines these communication challenges and explores AI-based approaches to mitigate them.
- Score: 20.52174004269699
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: While high-quality technology support can assist older adults in using digital applications, many struggle to articulate their issues due to unfamiliarity with technical terminology and age-related cognitive changes. This study examines these communication challenges and explores AI-based approaches to mitigate them. We conducted a diary study with English-speaking, community-dwelling older adults to collect asynchronous, technology-related queries and used reflexive thematic analysis to identify communication barriers. To address these barriers, we evaluated how foundation models can paraphrase older adults' queries to improve solution accuracy. Two controlled experiments followed: one with younger adults evaluating AI-rephrased queries and another with older adults evaluating AI-generated solutions. We also developed a pipeline using large language models to generate the first synthetic dataset of how older adults request tech support (OATS). We identified four key communication challenges: verbosity, incompleteness, over-specification, and under-specification. Our prompt-chaining approach using the large language model, GPT-4o, elicited contextual details, paraphrased the original query, and generated a solution. AI-rephrased queries significantly improved solution accuracy (69% vs. 46%) and Google search results (69% vs. 35%). Younger adults better understood AI-rephrased queries (93.7% vs. 65.8%) and reported greater confidence and ease. Older adults reported high perceived ability to answer contextual questions (89.8%) and follow solutions (94.7%), with high confidence and ease. OATS demonstrated strong fidelity and face validity. This work shows how foundation models can enhance technology support for older adults by addressing age-related communication barriers. The OATS dataset offers a scalable resource for developing equitable AI systems that better serve aging populations.
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