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What do people learn when they do not know that they are learning?
Until recently all of the work in the area of implicit learning
focused on empirical questions and methods. In this book, Axel
Cleeremans explores unintentional learning from an
information-processing perspective. He introduces a theoretical
framework that unifies existing data and models on implicit learning,
along with a detailed computational model of human performance in
sequence-learning situations.
The model, based on a simple recurrent network (SRN), is able to
predict perfectly the successive elements of sequences generated from
finite-state, grammars. Human subjects are shown to exhibit a similar
sensitivity to the temporal structure in a series of choice reaction
time experiments of increasing complexity; yet their explicit
knowledge of the sequence remains limited. Simulation experiments
indicate that the SRN model is able to account for these data in great
detail.
Cleeremans' model is also useful in understanding the effects of a
wide range of variables on sequence-learning performance such as
attention, the availability of explicit information, or the
complexity of the material. Other architectures that process
sequential material are considered. These are contrasted with the
SRN model, which they sometimes outperform. Considered together, the
models show how complex knowledge may emerge through the operation
of elementary mechanisms -- a key aspect of implicit learning
performance.
Axel Cleeremans is a Senior Research Assistant at the National Fund
for Scientific Research, Belgium.
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