On families of categorial grammars of bounded value, their learnability and related complexity questions

Authors
Publication date 2012
Journal Theoretical Computer Science
Volume | Issue number 452
Pages (from-to) 21-38
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
In Kanazawa (1998), the learnability of several parameterized families of categorial grammar classes was studied. These classes were shown to be learnable in the technical sense of identifiability in the limit from positive data. They are defined in terms of bounds on parameters of the grammars which intuitively correspond to restrictions on linguistic aspects, such as the amount of lexical ambiguity.
The time complexity of learning these classes has been studied in Costa Florncio (2003). It was shown that, for most of these classes, selecting a grammar from the class that is consistent with given data is View the MathML source-hard. In this paper existing complexity results are sharpened by demonstrating View the MathML source-hardness. Additionally, parameters are defined that allow View the MathML source-results; roughly, this implies that if these parameters are fixed, these problems become tractable.
We also define the new family Gk-sum-val, which is natural from the viewpoints of Parameterized Complexity, a flourishing area of Complexity Theory (see Downey and Fellows (1999)) and from Descriptional Complexity, a sub-area of Formal Language Theory (see Holzer and Kutrib (2010)). We prove its learnability, analyze its relation to other classes from the literature and prove a hierarchy theorem.
This approach is then generalized to a parameterized family defined in terms of a bound on the descriptional complexity expressed as a Hölder norm. We show that both the hierarchy result and the property of finite elasticity (and thus learnability) are preserved under this generalization.
Document type Article
Language English
Published at https://doi.org/10.1016/j.tcs.2012.05.016
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