LLM-Assisted Pseudo-Relevance Feedback

Bibliographic citation

Otero, D., Parapar, J. (2026). LLM-Assisted Pseudo-Relevance Feedback. In: Campos, R., et al. Advances in Information Retrieval. ECIR 2026. Lecture Notes in Computer Science, vol 16484. Springer, Cham. https://doi.org/10.1007/978-3-032-21300-6_36

Type of academic work

Academic degree

Abstract

[Abstract]: Query expansion is a long-standing technique to mitigate vocabulary mismatch in ad hoc Information Retrieval. Pseudo-relevance feedback methods, such as RM3, estimate an expanded query model from the top-ranked documents, but remain vulnerable to topic drift when early results include noisy or tangential content. Recent approaches instead prompt Large Language Models to generate synthetic expansions or query variants. While effective, these methods risk hallucinations and misalignment with collection-specific terminology. We propose a hybrid alternative that preserves the robustness and interpretability of classical PRF while leveraging LLM semantic judgement. Our method inserts an LLM-based filtering stage prior to RM3 estimation: the LLM judges the documents in the initial top-k ranking, and RM3 is computed only over those accepted as relevant. This simple intervention improves over blind PRF and a strong baseline across several datasets and metrics.

Description

The conference was held in Delft, The Netherlands, from 29 March to 2 April 2026

Rights

© 2026 The Author(s), under exclusive license to Springer Nature Switzerland AG