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Raina, V., Kassner, N., Popat, K., Lewis, P., Cancedda, N., & Martin, L. ERATE: Efficient Retrieval Augmented Text Embeddings. 
Resource type: Journal Article
BibTeX citation key: anon.138
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Categories: General
Creators: Cancedda, Kassner, Lewis, Martin, Popat, Raina
Attachments   URLs   https://www.semant ... 0dbbc49f3e19908a5b
Abstract
This work is the first to incorporate retrieval to general purpose embeddings as a new paradigm, which it applies to the semantic similarity tasks of SentEval and offers key insights that encourages future work into investigating the potential of retrieval-based embedDings. Embedding representations of text are useful for downstream natural language processing tasks. Several universal sentence representation methods have been proposed with a particular focus on self-supervised pre-training approaches to leverage the vast quantities of unlabelled data. However, there are two challenges for generating rich embedding representations for a new document. 1) The latest rich embedding generators are based on very large costly transformer-based architectures. 2) The rich embedding representation of a new document is limited to only the information provided without access to any explicit contextual and temporal information that could potentially further enrich the representation. We propose efficient retrieval-augmented text embeddings (ERATE) that tackles the first issue and offers a method to tackle the second issue. To the best of our knowledge, we are the first to incorporate retrieval to general purpose embeddings as a new paradigm, which we apply to the semantic similarity tasks of SentEval. Despite not reaching state-of-the-art performance, ERATE offers key insights that encourages future work into investigating the potential of retrieval-based embeddings.
  
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