Section: New Results
Active Inference-based design of adaptive P300-Speller BCIs
Participants: Jelena Mladenovic, Fabien Lotte
Recent developments in computational neuroscience gave rise to an efficient generic framework to implement both optimal perceptual (Bayesian) inference and choice behaviour. This framework named Active Inference rests on minimizing free energy or surprise [3]. We suggest it could be used to implement efficient adaptive Brain-Computer Interfaces (BCIs). We briefly illustrate it on a simulated P300-speller task. This work in collaboration with Inserm Lyon, was published in the first Neuro Adaptive Technology conference [28].