Investigating the Potential of Artificial Intelligence Powered
Interfaces to Support Different Types of Memory for People with Dementia
- URL: http://arxiv.org/abs/2211.10756v1
- Date: Sat, 19 Nov 2022 17:31:45 GMT
- Title: Investigating the Potential of Artificial Intelligence Powered
Interfaces to Support Different Types of Memory for People with Dementia
- Authors: Hanuma Teja Maddali and Emma Dixon and Alisha Pradhan and Amanda Lazar
- Abstract summary: One of the most difficult challenges to address is supporting the fluctuating accessibility needs of people with dementia.
We present future directions for the design of AI-based systems to personalize an interface for dementia-related changes in different types of memory.
- Score: 22.89233407347665
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: There has been a growing interest in HCI to understand the specific
technological needs of people with dementia and supporting them in
self-managing daily activities. One of the most difficult challenges to address
is supporting the fluctuating accessibility needs of people with dementia,
which vary with the specific type of dementia and the progression of the
condition. Researchers have identified auto-personalized interfaces, and more
recently, Artificial Intelligence or AI-driven personalization as a potential
solution to making commercial technology accessible in a scalable manner for
users with fluctuating ability. However, there is a lack of understanding on
the perceptions of people with dementia around AI as an aid to their everyday
technology use and its role in their overall self-management systems, which
include other non-AI technology, and human assistance. In this paper, we
present future directions for the design of AI-based systems to personalize an
interface for dementia-related changes in different types of memory, along with
expectations for AI interactions with the user with dementia.
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