Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

BeLink: Biomedical Entity Linking Meets Generative Re-Ranking

About

Despite recent progress, Biomedical Entity Linking (BEL) with large language models (LLMs) remains computationally inefficient and challenging to deploy in practical settings. In this work, we demonstrate that instruction-tuning of open-source generative models can offer an effective solution when applied at the re-ranking stage of the BEL pipeline. We propose a set-wise instruction-tuning formulation that enables fast and accurate candidate selection. Our method demonstrates strong performance on multiple BEL benchmarks, yielding significant improvements in linking accuracy (3%-24%) while reducing inference time compared to the state-of-the-art. We integrate our generative re-ranker into BeLink, a modular, end-to-end system designed for practical real-world BEL applications.

Darya Shlyk, Stefano Montanelli, Lawrence Hunter• 2026

Related benchmarks

TaskDatasetResultRank
Biomedical Entity LinkingBC5CDR(D) (test)
Accuracy@177
7
Biomedical Entity LinkingBC5CDR (C) (test)
Accuracy@193.5
7
Biomedical Entity LinkingGNormPlus (test)
Acc@181.5
7
Biomedical Entity LinkingNLM-Gene (test)
Accuracy@151.6
7
Biomedical Entity LinkingLINNAEUS (test)
Top-1 Accuracy90
7
Biomedical Entity LinkingNCBI-Dis (test)
Accuracy@173.4
7
Biomedical Entity LinkingNLM-Chem (test)
Acc@177.4
7
Biomedical Entity LinkingS800 (test)
Accuracy@174.2
7
Showing 8 of 8 rows

Other info

Follow for update