Researchers predict viewer interest, not just attention, in public screen content

We are constantly surrounded by screens that offer us information on the weather, current events or the latest offers from the corner shop. Yet most displays are updated manually, if at all. Researchers at Aalto University and the Finnish Center for Artificial Intelligence FCAI have developed a new, simpler way to choose and arrange public display content so that it really catches people鈥檚 attention.
鈥業n the past, eye-tracking devices have been used to see how people behave in front of the screen. That tells you about users鈥 attention, but not so much about their actual interest. We are now quantifying user interest, which hasn鈥檛 been done before,鈥 says Maria Montoya Freire, a postdoctoral researcher at Aalto University and the first author of the study presented at the Ubicomp conference last week.
The new method works on digital displays that have multiple content items. If certain items 鈥 like a forecasted thundershower or detour information 鈥 catch interest, the display automatically adapts to prioritise the content and how it appears. This has promise for a notable improvement to current practices in which most displays are manually updated.
鈥楾he screen鈥檚 layout is recalculated so that interesting topics are more likely to get noticed and more information appears. For example, if weather news or bus schedules are more important than restaurant menus, our method can pick that up, and after some time they will get more prominence when the layout is re-optimised. And all of this happens automatically,鈥 explains Antti Oulasvirta, Professor at Aalto University and the coordinator of FCAI鈥檚 research program on Interactive AI.
Instead of eye-trackers, the new method only requires information about how much viewers spend time in front of different contents. It is based on inverse modelling, an approach that hasn鈥檛 been used until now in research on pervasive displays.
鈥楳ost often in this field problem-solving is done by using forward modelling, where the starting point is a model, and human-like data is generated from that. Here, we鈥檝e done the opposite: we use data to infer model parameters, which is called inverse modelling. The advantage is that it is much more accurate for characterising user behaviour,鈥 Montoya says.
The researchers first used synthetic data, that is, artificially produced data that shares certain similarities with original data sets, as the basis for building the model. They then gathered real-world user data by showing people changing displays with different content items simultaneously on screen. The team measured participants鈥 viewing time and, afterwards, participants were asked to rate their interest in the content shown.
So far, the researchers have developed and used the model in a university context, with display content involving upcoming events, local news, and the like. To extend its use to other contexts, only viewing time data from the new setting would be needed.
鈥榃hat鈥檚 novel about the method is that we don鈥檛 need eye-tracking or click data to model what people are interested in 鈥 it鈥檚 enough that the screen can measure how long people stay in front of it. We don鈥檛 need to bother viewers at all,鈥 Oulasvirta says.
The study builds on foraging theory, which was originally developed in biology for predicting animals鈥 hunting and foraging behaviour. Information foraging theory aims to characterise user behaviour when searching information or have to decide between sources.
Link to (Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies)
Finnish Center for Artificial Intelligence
The Finnish Center for Artificial Intelligence FCAI is a research hub initiated by Aalto University, the University of Helsinki, and the Technical Research Centre of Finland VTT. The goal of FCAI is to develop new types of artificial intelligence that can work with humans in complex environments, and help modernize Finnish industry. FCAI is one of the national flagships of the Academy of Finland.

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