SimDem A Multi-agent Simulation Environment to Model Persons with
Dementia and their Assistance
- URL: http://arxiv.org/abs/2107.05346v1
- Date: Mon, 12 Jul 2021 12:13:47 GMT
- Title: SimDem A Multi-agent Simulation Environment to Model Persons with
Dementia and their Assistance
- Authors: Muhammad Salman Shaukat, Bjarne Christian Hiller, Sebastian Bader,
Thomas Kirste
- Abstract summary: We propose a simulation model (SimDem) that focuses on cognitive impairments suffered by Persons with Dementia (PwD)
SimDem can be easily configured and adapted by the users to model and evaluate assistive solutions.
- Score: 2.179313476241343
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Developing artificial intelligence based assistive systems to aid Persons
with Dementia (PwD) requires large amounts of training data. However, data
collection poses ethical, legal, economic, and logistic issues. Synthetic data
generation tools, in this regard, provide a potential solution. However, we
believe that already available such tools do not adequately reflect cognitive
deficiencies in behavior simulation. To counter these issues we propose a
simulation model (SimDem ) that primarily focuses on cognitive impairments
suffered by PwD and can be easily configured and adapted by the users to model
and evaluate assistive solutions.
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