AITentive: AI supported Attentive User Interfaces
AITentive: AI supported Attentive User Interfaces
Disciplines
Computer Sciences (80%); Psychology (20%)
Keywords
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Human-Computer Interaction,
Human Factors,
Human-Centered Artificial Intelligence,
Attentive User Interface,
Multitasking Research,
Human-Machine Cooperation
Imagine you are in the process of writing an important document, as suddenly, you are notified by your smartphone about a message from one of your friends. You interrupt working on the document to quickly answer them before coming back to work on the document. As you were interrupted while drafting a longer sentence, you must reorient yourself in the document to determine how the sentence should be completed. What if the notification from your friend would have arrived after you completed the sentence instead of while you were in the middle of it? Notifications and interruptions have become an integral part of our multitasking lives, although we all know they disturb our work patterns. Research has shown that interruptions negatively affect our productivity and wellbeing. In safety-critical settings for example, while driving a car notifications are not only time-costly, they can become a severe safety risk since many humans would communicate even while driving a vehicle, which is typically prohibited by law. To counter these adverse effects, computer scientists and psychologists have proposed to develop so-called attentive user interfaces, computer systems that better time notifications and interruptions so that no negative side effects can occur. However, this is a highly complex goal: Such systems should not only be aware of the users and their surroundings, but they might also need awareness of the activities we all are pursuing. However, since humans and activities are highly complex and diverse, a completely domain- and task-independent attentive user interface has not been built so far. The proposed project AITentive (a word creation combining artificial intelligence AI and attentive) aims at solving this issue with the help of AI algorithms. Within the scope of the project, a system will be developed that can learn by itself when notifications and interruptions are most suitable so that safety and productivity can be increased. This system should work independently of particular humans, situations, or tasks/activities. For example, it should be able to automatically adapt to document writing and car driving situations, as discussed before. Successful implementation of such an interface can potentially improve humans interactions with computerized systems. Ultimately, the Attentive User Interface developed within the scope of the project may be able to improve safety and productivity while maintaining human wellbeing in a wide range of scenarios. Seite 1 von
- IT U Interdisciplinary Transformation University Austria - 100%
- Thomas Gärtner, Technische Universität Wien , national collaboration partner
- Birsen Donmez, University of Toronto - Canada
- Christian P. Janssen, Utrecht University - Netherlands