Hybrid Parsing: Using Probabilistic Models as Predictors for a Symbolic ParserDownload PDFOpen Website

2006 (modified: 12 Nov 2022)ACL 2006Readers: Everyone
Abstract: In this paper we investigate the benefit of stochastic predictor components for the parsing quality which can be obtained with a rule-based dependency grammar. By including a chunker, a supertagger, a PP attacher, and a fast probabilistic parser we were able to improve upon the baseline by 3.2%, bringing the overall labelled accuracy to 91.1% on the German NEGRA corpus. We attribute the successful integration to the ability of the underlying grammar model to combine uncertain evidence in a soft manner, thus avoiding the problem of error propagation.
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