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Autori principali: Han, Simeng, Gomez, Frank Palma, Vu, Tu, Li, Zefei, Cer, Daniel, Zeng, Hansi, Tar, Chris, Cohan, Arman, Abrego, Gustavo Hernandez
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2502.16766
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author Han, Simeng
Gomez, Frank Palma
Vu, Tu
Li, Zefei
Cer, Daniel
Zeng, Hansi
Tar, Chris
Cohan, Arman
Abrego, Gustavo Hernandez
author_facet Han, Simeng
Gomez, Frank Palma
Vu, Tu
Li, Zefei
Cer, Daniel
Zeng, Hansi
Tar, Chris
Cohan, Arman
Abrego, Gustavo Hernandez
contents Traditional text embedding benchmarks primarily evaluate embedding models' capabilities to capture semantic similarity. However, more advanced NLP tasks require a deeper understanding of text, such as safety and factuality. These tasks demand an ability to comprehend and process complex information, often involving the handling of sensitive content, or the verification of factual statements against reliable sources. We introduce a new benchmark designed to assess and highlight the limitations of embedding models trained on existing information retrieval data mixtures on advanced capabilities, which include factuality, safety, instruction following, reasoning and document-level understanding. This benchmark includes a diverse set of tasks that simulate real-world scenarios where these capabilities are critical and leads to identification of the gaps of the currently advanced embedding models. Furthermore, we propose a novel method that reformulates these various tasks as retrieval tasks. By framing tasks like safety or factuality classification as retrieval problems, we leverage the strengths of retrieval models in capturing semantic relationships while also pushing them to develop a deeper understanding of context and content. Using this approach with single-task fine-tuning, we achieved performance gains of 8\% on factuality classification and 13\% on safety classification. Our code and data will be publicly available.
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id arxiv_https___arxiv_org_abs_2502_16766
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle ATEB: Evaluating and Improving Advanced NLP Tasks for Text Embedding Models
Han, Simeng
Gomez, Frank Palma
Vu, Tu
Li, Zefei
Cer, Daniel
Zeng, Hansi
Tar, Chris
Cohan, Arman
Abrego, Gustavo Hernandez
Computation and Language
Traditional text embedding benchmarks primarily evaluate embedding models' capabilities to capture semantic similarity. However, more advanced NLP tasks require a deeper understanding of text, such as safety and factuality. These tasks demand an ability to comprehend and process complex information, often involving the handling of sensitive content, or the verification of factual statements against reliable sources. We introduce a new benchmark designed to assess and highlight the limitations of embedding models trained on existing information retrieval data mixtures on advanced capabilities, which include factuality, safety, instruction following, reasoning and document-level understanding. This benchmark includes a diverse set of tasks that simulate real-world scenarios where these capabilities are critical and leads to identification of the gaps of the currently advanced embedding models. Furthermore, we propose a novel method that reformulates these various tasks as retrieval tasks. By framing tasks like safety or factuality classification as retrieval problems, we leverage the strengths of retrieval models in capturing semantic relationships while also pushing them to develop a deeper understanding of context and content. Using this approach with single-task fine-tuning, we achieved performance gains of 8\% on factuality classification and 13\% on safety classification. Our code and data will be publicly available.
title ATEB: Evaluating and Improving Advanced NLP Tasks for Text Embedding Models
topic Computation and Language
url https://arxiv.org/abs/2502.16766