Contextual BERT: Conditioning the Language Model Using a Global State
October 29, 2020 ยท Declared Dead ยท ๐ Workshop on Graph-based Methods for Natural Language Processing
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Authors
Timo I. Denk, Ana Peleteiro Ramallo
arXiv ID
2010.15778
Category
cs.CL: Computation & Language
Citations
6
Venue
Workshop on Graph-based Methods for Natural Language Processing
Last Checked
4 months ago
Abstract
BERT is a popular language model whose main pre-training task is to fill in the blank, i.e., predicting a word that was masked out of a sentence, based on the remaining words. In some applications, however, having an additional context can help the model make the right prediction, e.g., by taking the domain or the time of writing into account. This motivates us to advance the BERT architecture by adding a global state for conditioning on a fixed-sized context. We present our two novel approaches and apply them to an industry use-case, where we complete fashion outfits with missing articles, conditioned on a specific customer. An experimental comparison to other methods from the literature shows that our methods improve personalization significantly.
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