资源论文On the Compositionality Prediction of Noun Phrases using Poincare Embeddings

On the Compositionality Prediction of Noun Phrases using Poincare Embeddings

2019-09-24 | |  79 |   52 |   0

Abstract
The compositionality degree of multiword expressions indicates to what extent the meaning of a phrase can be derived from the meaning of its constituents and their grammatical relations. Prediction of (non)-compositionality is a task that has been frequently addressed with distributional semantic models. We introduce a novel technique to blend hierarchical information with distributional information for predicting compositionality. In particular, we use hypernymy information of the multiword and its constituents encoded in the form of the recently introduced Poincare embeddings in ad-dition to the distributional information to detect compositionality for noun phrases. Using a weighted average of the distributional similarity and a Poincare similarity function,we obtain consistent and substantial, statistically significant improvement across three gold standard datasets over state-of-the-art models based on distributional information only. Unlike traditional approaches that solely use an unsupervised setting, we have also framed the problem as a supervised task, obtaining comparable improvements. Further,we publicly release our Poincare embeddings,which are trained on the output of handcrafted lexical-syntactic patterns on a large corpus.

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