Archive | 2021

Denoising Word Embeddings by Averaging in a Shared Space

 
 
 

Abstract


We introduce a new approach for smoothing and improving the quality of word embeddings. We consider a method of fusing word embeddings that were trained on the same corpus but with different initializations. We project all the models to a shared vector space using an efficient implementation of the Generalized Procrustes Analysis (GPA) procedure, previously used in multilingual word translation. Our word representation demonstrates consistent improvements over the raw models as well as their simplistic average, on a range of tasks. As the new representations are more stable and reliable, there is a noticeable improvement in rare word evaluations.

Volume None
Pages 294-301
DOI 10.18653/v1/2021.starsem-1.28
Language English
Journal None

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