Publication | Open Access
Generalizing Case Frames Using a Thesaurus and the MDL Principle
180
Citations
49
References
1995
Year
EngineeringSemantic WebSemanticsCorpus LinguisticsText MiningNatural Language ProcessingInformation RetrievalData ScienceCase-frame PatternsComputational LinguisticsLanguage StudiesMachine TranslationGeneralization ProblemCase-based ReasoningKnowledge DiscoveryTerminology ExtractionComputer ScienceMdl PrincipleDistributional SemanticsInformation ExtractionAutomated ReasoningKeyword ExtractionLarge Corpus DataLexical Complexity PredictionLinguisticsComputational Semantics
We address the problem of automatically acquiring case-frame patterns from large corpus data. In particular, we view this problem as the problem of estimating a (conditional) distribution over a partition of words, and propose a new generalization method based on the MDL (Minimum Description Length) principle. In order to assist with the efficiency, our method makes use of an existing thesaurus and restricts its attention on those partitions that are present as `cuts' in the thesaurus tree, thus reducing the generalization problem to that of estimating the `tree cut models' of the thesaurus. We then give an efficient algorithm which provably obtains the optimal tree cut model for the given frequency data, in the sense of MDL. We have used the case-frame patterns obtained using our method to resolve pp-attachment ambiguity.Our experimental results indicate that our method improves upon or is at least as effective as existing methods.
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