Publication | Open Access
Empirical Tests of the Gradual Learning Algorithm
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Citations
24
References
2001
Year
EngineeringMachine LearningAlgorithmic LearningOptimality TheorySyntactic StructureLanguage LearningCorpus LinguisticsNatural Language ProcessingSyntaxData MiningComputational LinguisticsGrammarLanguage StudiesStatisticsComputational Learning TheoryGrammatical FormalismPredictive AnalyticsKnowledge DiscoveryBoersma 1997Grammar InductionStatistical Learning TheoryGradual Learning AlgorithmLinguistics
The Gradual Learning Algorithm (Boersma 1997) is a constraint-ranking algorithm for learning optimality-theoretic grammars. The purpose of this article is to assess the capabilities of the Gradual Learning Algorithm, particularly in comparison with the Constraint Demotion algorithm of Tesar and Smolensky (1993, 1996, 1998, 2000), which initiated the learnability research program for Optimality Theory. We argue that the Gradual Learning Algorithm has a number of special advantages: it can learn free variation, deal effectively with noisy learning data, and account for gradient well-formedness judgments. The case studies we examine involve Ilokano reduplication and metathesis, Finnish genitive plurals, and the distribution of English light and dark /l/.
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