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[2N1-GS-4-02] Evaluating Late-interaction Approaches with Trained Text Embedding Models for Re-ranking
Keywords:search, reranking, deep learning
Reranking is to rank thousands of documents retrieved by a search engine from a large number of documents
by their relevance to a query. Late interaction, which independently encodes queries and documents before eval-
uating token-level interactions, shows promise in retrieval tasks; however, its application in reranking has been
less explored. This paper investigates whether late-interaction approaches work well on reranking and how much
influence pre-trained models, especially trained sentence-embedding models, are used in the late-interaction. Our
experiments show that late interaction is one of the best options for reranking on accuracy and latency perspec-
tives, and in in-domain settings, the late interaction with trained sentence-embedding models mostly overperforms
it with pre-trained language models.
by their relevance to a query. Late interaction, which independently encodes queries and documents before eval-
uating token-level interactions, shows promise in retrieval tasks; however, its application in reranking has been
less explored. This paper investigates whether late-interaction approaches work well on reranking and how much
influence pre-trained models, especially trained sentence-embedding models, are used in the late-interaction. Our
experiments show that late interaction is one of the best options for reranking on accuracy and latency perspec-
tives, and in in-domain settings, the late interaction with trained sentence-embedding models mostly overperforms
it with pre-trained language models.
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