Abstract: This work analyzes the decision-making process underlying choice behavior. First, neural and gaze activity were recorded experimentally from different subjects performing a choice task in a Web Interface. Second, choice models were fitted using rational, emotional and attentional features. The model’s predictions were evaluated in terms of their accuracy and rankings were made for each user. The results show that (1) the attentional models are the best in terms of its average performance across all users, but (2) each subject shows a different best model.
Related Posts
-
Human-in-the-Loop Digital Twins: How Real-Time Biosensor Data Is Transforming Simulator Research
-
Digital Twins in Consumer Research: Validating Synthetic Behavior with Biosensors
-
What Happens in Flow, and How Do We Capture It?
-
Forensic Science: Leveraging Human Behavior Research to Go Beyond the Crime Scene
