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arxiv: 1705.02925 · v1 · pith:37FAXIP3new · submitted 2017-05-08 · 💻 cs.CL

Ontology-Aware Token Embeddings for Prepositional Phrase Attachment

classification 💻 cs.CL
keywords embeddingsmodelwordattachmentconceptscontextcontext-sensitiveparameters
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Type-level word embeddings use the same set of parameters to represent all instances of a word regardless of its context, ignoring the inherent lexical ambiguity in language. Instead, we embed semantic concepts (or synsets) as defined in WordNet and represent a word token in a particular context by estimating a distribution over relevant semantic concepts. We use the new, context-sensitive embeddings in a model for predicting prepositional phrase(PP) attachments and jointly learn the concept embeddings and model parameters. We show that using context-sensitive embeddings improves the accuracy of the PP attachment model by 5.4% absolute points, which amounts to a 34.4% relative reduction in errors.

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