Transactions of the Association for Computational Linguistics (Jan 2022)

How to Dissect a Muppet: The Structure of Transformer Embedding Spaces

  • Timothee Mickus,
  • Denis Paperno,
  • Mathieu Constant

DOI
https://doi.org/10.1162/tacl_a_00501
Journal volume & issue
Vol. 10
pp. 981 – 996

Abstract

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AbstractPretrained embeddings based on the Transformer architecture have taken the NLP community by storm. We show that they can mathematically be reframed as a sum of vector factors and showcase how to use this reframing to study the impact of each component. We provide evidence that multi-head attentions and feed-forwards are not equally useful in all downstream applications, as well as a quantitative overview of the effects of finetuning on the overall embedding space. This approach allows us to draw connections to a wide range of previous studies, from vector space anisotropy to attention weights.