Beyond Peaks and Troughs: Multiplexed Performance Monitoring Signals in
the EEG
- Markus Ullsperger
Abstract
With the discovery of event-related potentials elicited by errors more
than thirty years ago, a new avenue of research on performance
monitoring, cognitive control, and decision making was opened. Since
then, the field has developed and expanded fulminantly. After a brief
overview on the EEG correlates of performance monitoring, this article
reviews recent advancements in the field of performance monitoring based
on single-trial analyses using independent component analysis, multiple
regression, and multivariate pattern classification. Given the close
interconnection between performance monitoring and reinforcement
learning, computational modeling and model-based EEG analyses have made
a particularly strong impact. The reviewed findings demonstrate that
error- and feedback-related EEG dynamics represent variables reflecting
how performance monitoring signals are weighted and transformed into an
adaptation signal that guides future decisions and actions. The
model-based single-trial analysis approach goes far beyond conventional
peak-and-trough analyses of event-related potentials and enables testing
mechanistic theories of performance monitoring, cognitive control and
decision making.Submitted to Psychophysiology 27 Jan 2024Review(s) Completed, Editorial Evaluation Pending
08 Feb 20241st Revision Received
09 Feb 2024Submission Checks Completed
09 Feb 2024Assigned to Editor
09 Feb 2024Review(s) Completed, Editorial Evaluation Pending
10 Feb 2024Editorial Decision: Accept