"This work represents what is arguably the most clear-minded and far-
reaching current research program on the applications of formal
learning theory to the problem of language acquisition."
-- Stefano Bertolo, Massachusetts Institute of
Technology
Highlighting the close relationship between linguistic explanation and
learnability, Bruce Tesar and Paul Smolensky examine the implications
of Optimality Theory (OT) for language learnability. They show how
the core principles of OT lead to the learning principle of constraint
demotion, the basis for a family of algorithms that infer constraint
rankings from linguistic forms.
Of primary concern to the authors are the ambiguity of the data
received by the learner and the resulting interdependence of the core
grammar and the structural analysis of overt linguistic forms. The
authors argue that iterative approaches to interdependencies, inspired
by work in statistical learning theory, can be successfully adapted to
address the interdependencies of language learning. Both OT and
Constraint Demotion play critical roles in their adaptation. The
authors support their findings both formally and through simulations.
They also illustrate how their approach could be extended to other
language learning issues, including subset relations and the learning
of phonological underlying forms.
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