Is there such a thing as a ‘good statistical learner’?
Date
2022Author
Bogaerts, Louisa
Siegelman, Noam
Christiansen, Morten H.
Frost, Ram
Metadata
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Louisa Bogaerts, Noam Siegelman, Morten H. Christiansen, Ram Frost, Is there such a thing as a ‘good statistical learner’?, Trends in Cognitive Sciences, Volume 26, Issue 1, 2022, Pages 25-37, ISSN 1364-6613, https://doi.org/10.1016/j.tics.2021.10.012.
Trends in Cognitive Sciences
Trends in Cognitive Sciences
Abstract
A growing body of research investigates individual differences in the learning of
statistical structure, tying them to variability in cognitive (dis)abilities. This
approach views statistical learning (SL) as a general individual ability that underlies
performance across a range of cognitive domains. But is there a general SL capacity
that can sort individuals from ‘bad’ to ‘good’ statistical learners? Explicating
the suppositions underlying this approach, we suggest that current evidence
supporting it is meager. We outline an alternative perspective that considers
the variability of statistical environments within different cognitive domains.
Once we focus on learning that is tuned to the statistics of real-world sensory
inputs, an alternative view of SL computations emerges with a radically different
outlook for SL research.