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Reverse inference of memory retrieval processes underlying metacognitive monitoring of learning using multivariate pattern analysis.

TitleReverse inference of memory retrieval processes underlying metacognitive monitoring of learning using multivariate pattern analysis.
Publication TypeJournal Article
Year of Publication2016
AuthorsStiers, P., Falbo L., Goulas A., van Gog T., & de Bruin A.
JournalNeuroimage
Volume132
Pagination11-23
Date Published2016 05 15
ISSN1095-9572
KeywordsAdult, Algorithms, Brain, Brain Mapping, Female, Humans, Learning, Magnetic Resonance Imaging, Male, Memory, Long-Term, Memory, Short-Term, Mental Recall, Metacognition, Multivariate Analysis, Pattern Recognition, Automated, Young Adult
Abstract

Monitoring of learning is only accurate at some time after learning. It is thought that immediate monitoring is based on working memory, whereas later monitoring requires re-activation of stored items, yielding accurate judgements. Such interpretations are difficult to test because they require reverse inference, which presupposes specificity of brain activity for the hidden cognitive processes. We investigated whether multivariate pattern classification can provide this specificity. We used a word recall task to create single trial examples of immediate and long term retrieval and trained a learning algorithm to discriminate them. Next, participants performed a similar task involving monitoring instead of recall. The recall-trained classifier recognized the retrieval patterns underlying immediate and long term monitoring and classified delayed monitoring examples as long-term retrieval. This result demonstrates the feasibility of decoding cognitive processes, instead of their content.

DOI10.1016/j.neuroimage.2016.02.008
Alternate JournalNeuroimage
PubMed ID26883066

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