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arxiv:2403.20327

Gecko: Versatile Text Embeddings Distilled from Large Language Models

Published on Mar 29
ยท Submitted by akhaliq on Apr 1
#2 Paper of the day
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Abstract

We present Gecko, a compact and versatile text embedding model. Gecko achieves strong retrieval performance by leveraging a key idea: distilling knowledge from large language models (LLMs) into a retriever. Our two-step distillation process begins with generating diverse, synthetic paired data using an LLM. Next, we further refine the data quality by retrieving a set of candidate passages for each query, and relabeling the positive and hard negative passages using the same LLM. The effectiveness of our approach is demonstrated by the compactness of the Gecko. On the Massive Text Embedding Benchmark (MTEB), Gecko with 256 embedding dimensions outperforms all existing entries with 768 embedding size. Gecko with 768 embedding dimensions achieves an average score of 66.31, competing with 7x larger models and 5x higher dimensional embeddings.

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Congratulations on your remarkable work on this paper. Are there any plans to release the model and/or the dataset?

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Its cool to see a small and performant model, but if its hidden behind an API then it doesnt matter that much. Its a bit disappointing...

This paper was selected as the spotlight paper for the week of April 1 at Harmonious:

https://www.harmonious.ai/t/weekly-paper-roundup-gecko-text-embedding-distilled-from-llms-4-1-24/135

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