IRAIJan 15, 2025

Guiding Retrieval using LLM-based Listwise Rankers

arXiv:2501.09186v123 citationsh-index: 9ECIR
Originality Incremental advance
AI Analysis

This addresses a key limitation for search systems using LLM rerankers, especially in resource-constrained settings, though it is an incremental adaptation of existing methods.

The paper tackles the bounded recall problem in LLM-based listwise reranking by proposing an adaptive retrieval method that merges initial and feedback results, improving nDCG@10 by up to 13.23% and recall by 28.02% while keeping LLM inferences constant.

Large Language Models (LLMs) have shown strong promise as rerankers, especially in ``listwise'' settings where an LLM is prompted to rerank several search results at once. However, this ``cascading'' retrieve-and-rerank approach is limited by the bounded recall problem: relevant documents not retrieved initially are permanently excluded from the final ranking. Adaptive retrieval techniques address this problem, but do not work with listwise rerankers because they assume a document's score is computed independently from other documents. In this paper, we propose an adaptation of an existing adaptive retrieval method that supports the listwise setting and helps guide the retrieval process itself (thereby overcoming the bounded recall problem for LLM rerankers). Specifically, our proposed algorithm merges results both from the initial ranking and feedback documents provided by the most relevant documents seen up to that point. Through extensive experiments across diverse LLM rerankers, first stage retrievers, and feedback sources, we demonstrate that our method can improve nDCG@10 by up to 13.23% and recall by 28.02%--all while keeping the total number of LLM inferences constant and overheads due to the adaptive process minimal. The work opens the door to leveraging LLM-based search in settings where the initial pool of results is limited, e.g., by legacy systems, or by the cost of deploying a semantic first-stage.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes