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Learnability in optimality theory
Journal article   Open access   Peer reviewed

Learnability in optimality theory

Bruce Tesar and Paul Smolensky
Linguistic Inquiry, Vol.29(2), pp.229-268
1998
DOI:
https://doi.org/10.7282/t3-ytfd-jx94

Abstract

Optimality theory Learning Acquisition Computational linguistics
In this article we show how Optimality Theory yields a highly general Constraint Demotion principle for grammar learning. The resulting learning procedure specifically exploits the grammatical structure of Optimality Theory, independent of the content of substantive constraints defining any given grammatical module. We decompose the learning problem and present formal results for a central subproblem, deducing the constraint ranking particular to a target language, given structural descriptions of positive examples. The structure imposed on the space of possible grammars by Optimality Theory allows efficient convergence to a correct grammar. We discuss implications for learning from overt data only, as well as other learning issues. We argue that Optimality Theory promotes confluence of the demands of more effective learnability and deeper linguistic explanation.
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http://dx.doi.org/10.1162/002438998553734View
Linguistic Inquiry
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