Language Model Re-rankers are Fooled by Lexical Similarities
Paper in proceeding, 2025

Language model (LM) re-rankers are used to refine retrieval results for retrieval-augmented generation (RAG). They are more expensive than lexical matching methods like BM25 but assumed to better process semantic information and the relations between the query and the retrieved answers. To understand whether LM re-rankers always live up to this assumption, we evaluate 6 different LM re-rankers on the NQ, LitQA2 and DRUID datasets. Our results show that LM re-rankers struggle to outperform a simple BM25 baseline on DRUID. Leveraging a novel separation metric based on BM25 scores, we explain and identify re-ranker errors stemming from lexical dissimilarities. We also investigate different methods to improve LM re-ranker performance and find these methods mainly useful for NQ. Taken together, our work identifies and explains weaknesses of LM re-rankers and points to the need for more adversarial and realistic datasets for their evaluation.

information retrieval

language models

natural language processing

rerankers

retrieval-augmented generation

Author

Lovisa Hagström

University of Gothenburg

Data Science and AI 2

Ercong Nie

Ludwig Maximilian University of Munich (LMU)

Ruben Halifa

amass technologies

Helmut Schmid

Ludwig Maximilian University of Munich (LMU)

Richard Johansson

Data Science and AI 2

University of Gothenburg

Alexander Junge

amass technologies

Proceedings of the Eighth Fact Extraction and VERification Workshop (FEVER)

18-33

Eighth Fact Extraction and VERification Workshop (FEVER)
Vienna, Austria,

Subject Categories (SSIF 2025)

Natural Language Processing

Information Systems

Artificial Intelligence

DOI

10.18653/v1/2025.fever-1.2

More information

Latest update

8/29/2025