BioHiCL: Hierarchical Multi-Label Contrastive Learning for Biomedical Retrieval with MeSH Labels
About
Effective biomedical information retrieval requires modeling domain semantics and hierarchical relationships among biomedical texts. Existing biomedical generative retrievers build on coarse binary relevance signals, limiting their ability to capture semantic overlap. We propose BioHiCL (Biomedical Retrieval with Hierarchical Multi-Label Contrastive Learning), which leverages hierarchical MeSH annotations to provide structured supervision for multi-label contrastive learning. Our models, BioHiCL-Base (0.1B) and BioHiCL-Large (0.3B), achieve promising performance on biomedical retrieval, sentence similarity, and question answering tasks, while remaining computationally efficient for deployment.
Mengfei Lan, Lecheng Zheng, Halil Kilicoglu• 2026
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Information Retrieval | TREC-COVID | NDCG@1081.2 | 59 | |
| Semantic Textual Similarity | BIOSSES | Spearman Correlation89.6 | 55 | |
| Information Retrieval | SciFact | nDCG@100.765 | 51 | |
| Information Retrieval | NFCorpus | nDCG@100.385 | 33 | |
| Information Retrieval | SCIDOCS | NDCG@100.228 | 19 | |
| Question Answering | PubMedQA | Recall@189.8 | 15 | |
| Sentence Similarity | SciFact Sentence | Spearman Correlation0.359 | 15 |
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