tarballs_ds002_raw.tgz | 3.34GB |
Type: Dataset
Tags: fMRI
Bibtex:
Tags: fMRI
Bibtex:
@article{, title = {fMRI Classification learning}, journal = {}, author = {Aron, A.R. and Poldrack, R.A. and Gluck, M.A.}, year = {2011}, url = {https://openfmri.org/dataset/ds000002}, license = {ODC Public Domain Dedication and Licence (PDDL)}, abstract = {Submitted by picchetti on Thu, 10/06/2011 - 11:36 Subjects performed a classification learning task with two different problems (across different runs), using a "weather prediction" task. In one (probabilistic) problem, the labels were probabilistically related to each set of cards. In another (deterministic) problem, the labels were deterministically related to each set of cards. After learning, subjects participated in an event-related block of judgment only (no feedback) in which they were presented with stimuli from both of the training problems. Tasks and Conditions: 001 Probabilistic classification task 001 Probabilistic classification trials 002 feedback 002 deterministic classification 001 Deterministic classification trials 002 feedback 003 classification probe without feedback 001 Classification trials: Probabilistic 002 Classification trials: Deterministic Investigator Info Investigators: Aron, A.R. Poldrack, R.A. Gluck, M.A. Acknowledgements and Funding: Whitehall Foundation and NSF grant BCS-0223843 to R.A.P. The authors thank Allan J. Tobin and Robert Bilder for helpful discussion and encouragement, Sabrina Tom for scanning and Catherine Myers and Daphna Shohamy for help with task design. Publications Pubmed Link: Long-term test-retest reliability of fMRI Digital Document: Methods.pdf Study Metadata Sample Size: 17 Scanner Type: 3 T Siemens Allegra MRI scanner Sharing License: PPDL Accession Number: ds000002} }