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Task-Adaptive Embedding Refinement via Test-time LLM Guidance

About

We explore the effectiveness of an LLM-guided query refinement paradigm for extending the usability of embedding models to challenging zero-shot search and classification tasks. Our approach refines the embedding representation of a user query using feedback from a generative LLM on a small set of documents, enabling embeddings to adapt in real time to the target task. We conduct extensive experiments with state-of-the-art text embedding models across a diverse set of challenging search and classification benchmarks. Empirical results indicate that LLM-guided query refinement yields consistent gains across all models and datasets, with relative improvements of up to +25% in literature search, intent detection, key-point matching, and nuanced query-instruction following. The refined queries improve ranking quality and induce clearer binary separation across the corpus, enabling the embedding space to better reflect the nuanced, task-specific constraints of each ad-hoc user query. Importantly, this expands the range of practical settings in which embedding models can be effectively deployed, making them a compelling alternative when costly LLM pipelines are not viable at corpus-scale. We release our experimental code for reproducibility, at https://github.com/IBM/task-aware-embedding-refinement.

Ariel Gera, Shir Ashury-Tahan, Gal Bloch, Ohad Eytan, Assaf Toledo• 2026

Related benchmarks

TaskDatasetResultRank
Information RetrievalFollowIR
MAP0.49
55
Information RetrievalREALSCHOLAR
MAP70
55
Information RetrievalCLINC150
MAP88
55
Information RetrievalARGKP 21
MAP83
40
Information RetrievalNFCorpus
MAP27
40
Information RetrievalBanking77
MAP71
40
RankingARGKP 21
MAP83
15
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