Estimating word co-occurrence probabilities from pretrained static embeddings using a log-bilinear modelDownload PDF

Anonymous

Published: 29 Mar 2022, Last Modified: 05 May 2023CMCL 2022Readers: Everyone
Keywords: co-occurrence, word embeddings, collocations, log-bilinear model
TL;DR: A way to estimate word co-occurrence probabilities using word embeddings
Abstract: We investigate how to use pretrained static word embeddings to deliver improved estimates of bilexical co-occurrence probabilities: conditional probabilities of one word given a single other word in a specific relationship. Such probabilities play important roles in psycholinguistics, corpus linguistics, and usage-based cognitive modeling of language more generally. We propose a log-bilinear model taking pretrained vector representations of the two words as input, enabling generalization based on the distributional information contained in both vectors. We show that this model outperforms baselines in estimating probabilities of adjectives given nouns that they attributively modify, and probabilities of nominal direct objects given their head verbs, given limited training data in Arabic, English, Korean, and Spanish.
4 Replies

Loading