Modelling mobile-based technology adoption among people with dementia

被引:0
|
作者
Chaurasia P. [1 ]
McClean S. [2 ]
Nugent C.D. [2 ]
Cleland I. [2 ]
Zhang S. [2 ]
Donnelly M.P. [2 ]
Scotney B.W. [2 ]
Sanders C. [3 ]
Smith K. [4 ]
Norton M.C. [5 ]
Tschanz J.A. [3 ]
机构
[1] School of Computing and Intelligent Systems, Ulster University, Londonderry
[2] School of Computing, Ulster University, Londonderry
[3] Department of Psychology, Utah State University, Logan
[4] Department of Family and Consumer Studies, University of Utah, Salt Lake City
[5] Department of Family, Consumer, and Human Development, Utah State University, Logan
关键词
Assistive technologies; Dementia; Medical history; Reminder application; Technology adoption;
D O I
10.1007/s00779-021-01572-x
中图分类号
学科分类号
摘要
The work described in this paper builds upon our previous research on adoption modelling and aims to identify the best subset of features that could offer a better understanding of technology adoption. The current work is based on the analysis and fusion of two datasets that provide detailed information on background, psychosocial, and medical history of the subjects. In the process of modelling adoption, feature selection is carried out followed by empirical analysis to identify the best classification models. With a more detailed set of features including psychosocial and medical history information, the developed adoption model, using kNN algorithm, achieved a prediction accuracy of 99.41% when tested on 173 participants. The second-best algorithm built, using NN, achieved 94.08% accuracy. Both these results have improved accuracy in comparison to the best accuracy achieved (92.48%) in our previous work, based on psychosocial and self-reported health data for the same cohort. It has been found that psychosocial data is better than medical data for predicting technology adoption. However, for the best results, we should use a combination of psychosocial and medical data where it is preferable that the latter is provided from reliable medical sources, rather than self-reported. © 2021, The Author(s).
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页码:365 / 384
页数:19
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