Redefining “Learning” in Statistical Learning: What Does an Online Measure Reveal About the Assimilation of Visual Regularities?
Fecha
2018Autor
Siegelman, Noam
Bogaerts, Louisa
Kronenfeld, Ofer
Frost, Ram
Metadatos
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Siegelman, N. , Bogaerts, L. , Kronenfeld, O. and Frost, R. (2018), Redefining “Learning” in Statistical Learning: What Does an Online Measure Reveal About the Assimilation of Visual Regularities?. Cogn Sci, 42: 692-727. doi:10.1111/cogs.12556
Resumen
From a theoretical perspective, most discussions of statistical learning (SL) have focused on
the possible “statistical” properties that are the object of learning. Much less attention has been
given to defining what “learning” is in the context of “statistical learning.” One major difficulty is
that SL research has been monitoring participants’ performance in laboratory settings with a strikingly
narrow set of tasks, where learning is typically assessed offline, through a set of two-alternative-
forced-choice questions, which follow a brief visual or auditory familiarization stream. Is that
all there is to characterizing SL abilities? Here we adopt a novel perspective for investigating the
processing of regularities in the visual modality. By tracking online performance in a self-paced SL
paradigm, we focus on the trajectory of learning. In a set of three experiments we show that this
paradigm provides a reliable and valid signature of SL performance, and it offers important insights
for understanding how statistical regularities are perceived and assimilated in the visual modality.
This demonstrates the promise of integrating different operational measures to our theory of SL.