Combining Statistical And Syntactical Systems For Spoken Language Understanding With Graphical Models
INTERSPEECH(2008)
摘要
There are two basic approaches for semantic processing in spoken language understanding: a rule based approach and a statistic approach. In this paper we combine both of them in a novel way by using statistical and syntactical dynamic bayesian networks (DBNs) together with Graphical Models (GMs) for spoken language understanding (SLU). GMs merge in a complex, mathematical way probability with graph theory. This results in four different setups which raise in their complexity. Comparing our results to a baseline system we achieve a F1-measure of 93.7% in word classes and 95.7% in concepts for our best setup in the ATIS-Task. This outperforms the baseline system relatively by 3.7% in word classes and by 8.2% in concepts. The expermiments were performend with the graphical model toolkit (GMTK).
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关键词
natural language understanding, machine learning, graphical models
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