Trace: • aslin_newport
Aslin newport
This is an old revision of the document!
====== Statistical Learning: From Acquiring Specific Items to Forming General Rules
Abstract
Statistical learning is a rapid and robust mechanism that enables adults and infants to extract patterns embedded in both
language and visual domains. Statistical learning operates implicitly, without instruction, through mere exposure to a set of
input stimuli. However, much of what learners must acquire about a structured domain consists of principles or rules that
can be applied to novel inputs. It has been claimed that statistical learning and rule learning are separate mechanisms; in this
article, however, we review evidence and provide a unifying perspective that argues for a single statistical-learning mechanism
that accounts for both the learning of input stimuli and the generalization of learned patterns to novel instances. The balance
between instance-learning and generalization is based on two factors: the strength of perceptual and cognitive biases that
highlight structural regularities, and the consistency of elements’ contexts (unique vs. overlapping) in the input.
Introduction: