Convergence properties of a gradual learning algorithm for Harmonic Grammar

Open Access
Authors
Publication date 2016
Host editors
  • J.J. McCarthy
  • J. Pater
Book title Harmonic Grammar and Harmonic Serialism
ISBN
  • 9781845531492
Series Advances in Optimality Theory
Pages (from-to) 389-434
Publisher Sheffield, UK: Equinox
Organisations
  • Faculty of Humanities (FGw) - Amsterdam Institute for Humanities Research (AIHR) - Amsterdam Center for Language and Communication (ACLC)
Abstract
This chapter investigates a gradual on-line learning algorithm for Harmonic Grammar. By adapting existing convergence proofs for perceptrons, we show that for any nonvarying target language, Harmonic-Grammar learners are guaranteed to converge to an appropriate grammar, if they receive complete information about the structure of the learning data. We also prove convergence when the learner incorporates evaluation noise, as in Stochastic Optimality Theory. Computational tests of the algorithm show that it converges quickly. When learners receive incomplete information (e.g. some structure remains hidden), tests indicate that the algorithm is more likely to converge than two comparable Optimality-Theoretic learning algorithms.
Document type Chapter
Language English
Downloads
SGAproof71 (Accepted author manuscript)
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