The extraction and integration framework: a two-process account of statistical learning.
@article{Thiessen2013TheEA,
title={The extraction and integration framework: a two-process account of statistical learning.},
author={Erik D. Thiessen and Alexandra T. Kronstein and Dan Hufnagle},
journal={Psychological bulletin},
year={2013},
volume={139 4},
pages={
792-814
}
}The term statistical learning in infancy research originally referred to sensitivity to transitional probabilities. Subsequent research has demonstrated that statistical learning contributes to infant development in a wide array of domains. The range of statistical learning phenomena necessitates a broader view of the processes underlying statistical learning. Learners are sensitive to a much wider range of statistical information than the conditional relations indexed by transitional…
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