Publication | Closed Access
Exact training of a neural syntactic language model
22
Citations
6
References
2004
Year
Unknown Venue
Structured PredictionSyntactic ParsingEngineeringLarge Language ModelCorpus LinguisticsText MiningNatural Language ProcessingSyntaxData ScienceComputational LinguisticsStructured Language ModelGrammarLanguage StudiesLanguage ModelsMachine TranslationExact TrainingNlp TaskGrammar InductionSemantic ParsingNew Training MethodApproximate Training MethodLinguisticsPo Tagging
The structured language model (SLM) aims at predicting the next word in a given word string by making a syntactical analysis of the preceding words. However, it faces the data sparseness problem because of the large dimensionality and diversity of the information available in the syntactic parsing. Previously, we proposed using neural network models for the SLM (Emami, A. et al., Proc. ICASSP, 2003; Emami, Proc. EUROSPEECH'03., 2003). The neural network model is better suited to tackle the data sparseness problem and its use gave significant improvements in perplexity and word error rate over the baseline SLM. We present a new method of training the neural net based SLM. This procedure makes use of the partial parsing hypothesized by the SLM itself, and is more expensive than the approximate training method used previously. Experiments with the new training method on the UPenn and WSJ corpora show significant reductions in perplexity and word error rate, achieving the lowest published results for the given corpora.
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