Publication | Open Access
Probabilistic CFG with latent annotations
256
Citations
14
References
2005
Year
Unknown Venue
Syntactic ParsingEngineeringLatent AnnotationsCorpus LinguisticsText MiningNatural Language ProcessingSyntaxData ScienceComputational LinguisticsGrammarLanguage StudiesParse TreesMachine TranslationUnlexicalized Pcfg ParserPcfg-la ModelGrammar InductionSemantic ParsingShallow ParsingParsingTreebanksAutomated ReasoningLinguistics
This paper defines a generative probabilistic model of parse trees, which we call PCFG-LA. This model is an extension of PCFG in which non-terminal symbols are augmented with latent variables. Fine-grained CFG rules are automatically induced from a parsed corpus by training a PCFG-LA model using an EM-algorithm. Because exact parsing with a PCFG-LA is NP-hard, several approximations are described and empirically compared. In experiments using the Penn WSJ corpus, our automatically trained model gave a performance of 86.6% (F1, sentences ≤ 40 words), which is comparable to that of an unlexicalized PCFG parser created using extensive manual feature selection.
| Year | Citations | |
|---|---|---|
Page 1
Page 1