Shanks, D. R. and St. John, M. F. (1994). Characteristics of
dissociable human learning systems. Behavioral and Brain Sciences,
17, 367-447.
Abstract
A number of ways of taxonomizing human learning have been proposed.
We examine the evidence for one such proposal, namely, that there
exist independent explicit and implicit learning systems. This
combines two further distinctions, (1) between learning that takes
place with versus without concurrent awareness, and (2) between
learning that involves the encoding of instances (or fragments) versus
the induction of abstract rules or hypotheses. Implicit learning is
assumed to involve unconscious rule learning. We examine the evidence
for implicit learning derived from subliminal learning, conditioning,
artificial grammar learning, instrumental learning, and reaction
times in sequence learning. We conclude that unconscious learning has
not been satisfactorily established in any of these areas. The
assumption that learning in some of these tasks (e.g., artificial
grammar learning) is predominantly based on rule abstraction is
questionable. When subjects cannot report the "implicitly learned"
rules that govern stimulus selection, this is often because their
knowledge consists of instances or fragments of the training stimuli
rather than rules. In contrast to the distinction between conscious
and unconscious learning, the distinction between instance and rule
learning is a sound and meaningful way of taxonomizing human learning.
We discuss various computational models of these two forms of learning.
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