What exactly is learned in visual statistical learning? Insights from Bayesian modeling
Date
2019Author
Siegelman, Noam
Bogaerts, Louisa
Armstrong, Blair C.
Frost, Ram
Metadata
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Noam Siegelman, Louisa Bogaerts, Blair C. Armstrong, Ram Frost, What exactly is learned in visual statistical learning? Insights from Bayesian modeling, Cognition, Volume 192, 2019, 104002, ISSN 0010-0277, https://doi.org/10.1016/j.cognition.2019.06.014.
Abstract
It is well documented that humans can extract patterns from continuous input through Statistical Learning (SL) mechanisms. The exact computations underlying this ability, however, remain unclear. One outstanding controversy is whether learners extract global clusters from the continuous input, or whether they are tuned to local co-occurrences of pairs of elements. Here we adopt a novel framework to address this issue, applying a generative latent-mixture Bayesian model to data tracking SL as it unfolds online using a self-paced learning paradigm. This framework not only speaks to whether SL proceeds through computations of global patterns versus local co-occurrences, but also reveals the extent to which specific individuals employ these computations. Our results provide evidence for inter-individual mixture, with different reliance on the two types of computations across individuals. We discuss the implications of these findings for understanding the nature of SL and individual-differences in this ability.