📄 论文总结
BiCA:利用引文感知硬负样本实现有效的生物医学稠密检索 / BiCA: Effective Biomedical Dense Retrieval with Citation-Aware Hard Negatives
1️⃣ 一句话总结
这篇论文提出了一种名为BiCA的新方法,通过利用学术论文中的引文关系自动生成高质量的训练负样本,从而显著提升了生物医学领域文档检索模型的性能,在多个任务中实现了先进水平。
Hard negatives are essential for training effective retrieval models. Hard-negative mining typically relies on ranking documents using cross-encoders or static embedding models based on similarity metrics such as cosine distance. Hard negative mining becomes challenging for biomedical and scientific domains due to the difficulty in distinguishing between source and hard negative documents. However, referenced documents naturally share contextual relevance with the source document but are not duplicates, making them well-suited as hard negatives. In this work, we propose BiCA: Biomedical Dense Retrieval with Citation-Aware Hard Negatives, an approach for hard-negative mining by utilizing citation links in 20,000 PubMed articles for improving a domain-specific small dense retriever. We fine-tune the GTE_small and GTE_Base models using these citation-informed negatives and observe consistent improvements in zero-shot dense retrieval using nDCG@10 for both in-domain and out-of-domain tasks on BEIR and outperform baselines on long-tailed topics in LoTTE using Success@5. Our findings highlight the potential of leveraging document link structure to generate highly informative negatives, enabling state-of-the-art performance with minimal fine-tuning and demonstrating a path towards highly data-efficient domain adaptation.
BiCA:利用引文感知硬负样本实现有效的生物医学稠密检索 / BiCA: Effective Biomedical Dense Retrieval with Citation-Aware Hard Negatives
这篇论文提出了一种名为BiCA的新方法,通过利用学术论文中的引文关系自动生成高质量的训练负样本,从而显著提升了生物医学领域文档检索模型的性能,在多个任务中实现了先进水平。