Publication | Open Access
Exploiting a probabilistic hierarchical model for generation
163
Citations
11
References
2000
Year
Unknown Venue
Artificial IntelligenceSyntactic ParsingEngineeringTree-based Stochastic ModelCorpus LinguisticsText MiningData GenerationNatural Language ProcessingSyntaxGenerative DevelopmentComputational LinguisticsStochastic ModelSystems EngineeringModeling And SimulationGrammarLanguage StudiesMachine TranslationTree ModelGenerative ModelsComputer ScienceGrammar InductionSemantic ParsingTreebanksProbabilistic Hierarchical ModelLinguisticsLanguage Generation
Previous stochastic approaches to generation do not include a tree-based representation of syntax. While this may be adequate or even advantageous for some applications, other applications profit from using as much syntactic knowledge as is available, leaving to a stochastic model only those issues that are not determined by the grammar. We present initial results showing that a tree-based model derived from a tree-annotated corpus improves on a tree model derived from an unannotated corpus, and that a tree-based stochastic model with a hand-crafted grammar outperforms both.
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