English

ReFIT: Relevance Feedback from a Reranker during Inference

Information Retrieval 2024-05-29 v2 Computation and Language

Abstract

Retrieve-and-rerank is a prevalent framework in neural information retrieval, wherein a bi-encoder network initially retrieves a pre-defined number of candidates (e.g., K=100), which are then reranked by a more powerful cross-encoder model. While the reranker often yields improved candidate scores compared to the retriever, its scope is confined to only the top K retrieved candidates. As a result, the reranker cannot improve retrieval performance in terms of Recall@K. In this work, we propose to leverage the reranker to improve recall by making it provide relevance feedback to the retriever at inference time. Specifically, given a test instance during inference, we distill the reranker's predictions for that instance into the retriever's query representation using a lightweight update mechanism. The aim of the distillation loss is to align the retriever's candidate scores more closely with those produced by the reranker. The algorithm then proceeds by executing a second retrieval step using the updated query vector. We empirically demonstrate that this method, applicable to various retrieve-and-rerank frameworks, substantially enhances retrieval recall across multiple domains, languages, and modalities.

Keywords

Cite

@article{arxiv.2305.11744,
  title  = {ReFIT: Relevance Feedback from a Reranker during Inference},
  author = {Revanth Gangi Reddy and Pradeep Dasigi and Md Arafat Sultan and Arman Cohan and Avirup Sil and Heng Ji and Hannaneh Hajishirzi},
  journal= {arXiv preprint arXiv:2305.11744},
  year   = {2024}
}

Comments

Preprint

R2 v1 2026-06-28T10:39:22.260Z