Follow #EEGManyLabs on X and Bluesky for updates, threads on specific studies, and new Stage 2 results as they appear. Share the site with your lab and collaborators. Letβs build better EEG together.
Follow #EEGManyLabs on X and Bluesky for updates, threads on specific studies, and new Stage 2 results as they appear. Share the site with your lab and collaborators. Letβs build better EEG together.
Huge thanks to our community. Your contributions power inclusive, rigorous, high-impact EEG science.
Cap-E will guide you through related projects, spin-offs, and associated initiatives. This includes EEG100 celebrating 100 years of EEG (see dx.doi.org/10.1038/s415...) and the pan-European network EEG101 COST Action (www.cost.eu/actions/CA24...).
We are also introducing our new mascot, Professor Cap-E (thank you to Aleksei Medvedev for the design).
It is not too late to join a replication team. Several projects are still recruiting new labs. You will find sign-up forms on the Replications page.
You will find Stage 1 protocols and Stage 2 results, with links to data, code, and materials.
Including a recently completed 22-lab replication of the foundational N2pc study by Eimer (1996): dx.doi.org/10.1016/j.co...
#EEGManyLabs website is now live: eegmanylabs.org
A home for our global effort to test the replicability of influential EEG findings, share resources, improve methods in cognitive neuroscience, and grow an open, connected community.
The first published paper to emerge from @eegmanylabs.bsky.social settles a debate 20 years in the making. Read more in this monthβs Null and Noteworthy. β¬β¬β¬β¬
By @ldattaro.bsky.social
www.thetransmitter.org/null-and-not...
This is just the first in our #EEGManyLabs seriesβshowing how collaborative EEG science can refine major theories. Watch this space for more. In the meantime, read the full paper for the deep dive: doi.org/10.1016/j.co...
Huge thanks to all labs involved!
One of the best parts? β Minimal heterogeneity. β Across different EEG systems & participant samples, the pattern held strong, suggesting we have a robust and generalizable result.
The P300 also wasnβt as simple as βexpectancy-only: we found both expectancy and valence effects. This implies that feedback evaluation is spread across multiple stages, rather than being sharply split into βFRN for valenceβ and βP300 for expectancy.β
The original study had only 17 participantsβtypical for its time but underpowered (~40% power). Our larger sample detected the small-to-moderate expectancy effect (Ξ·pΒ² = .08βidentical to the original!).
π« Reminder: Absence of evidence β Evidence of absence!
π¨ Results: The FRN isnβt just about valence! π¨
It was significantly modulated by both:
β
Valence (reward vs. no reward)
β
Expectancy (expected vs. unexpected)
These results align more with Holroyd & Colesβ prediction error theory than Hajcak et al.βs original conclusion.
We put this to the test across 13 labs with 359 participants worldwideβa massive jump from the original n=17! Our goal? π§
π Does the FRN really ignore expectancy?
π Is the P300 only about surprises?
A new βtwo-stageβ model proposed:
β
FRN tracks valence (good vs. bad outcome)
β
P300 tracks expectancy (surprise factor)
With 600+ citations, this study has shaped how researchers interpret feedback-locked ERPs.
But Hajcak et al. (2005) found something different: They found the FRN only distinguished reward vs. no reward, NOT whether an outcome was expected. π€― This challenged Holroyd & Colesβ reinforcement-learning theory and led to a new interpretation of feedback processing.
The original study (Hajcak, Holroyd, Moser, & Simons, 2005) tested a highly influential idea: Holroyd & Coles (2002) reinforcement learning model proposed that the FRN (feedback-related negativity) signals a better/worse-than-expected dopamine-driven prediction error.
π¨Exciting news! We now have the first-ever complete #EEGManyLabs replication. This large-scale multi-site study revisits a key debate in EEG & reinforcement learning. A thread! π§΅π
π Full paper: doi.org/10.1016/j.co...