Beyond Topical Similarity: Contrastive Evidence Retrieval with Interpretable Attention Alignment in RAG 文章

ArXiv CS.CL2026-06-02NEWSen作者: Francielle Vargas, Jo\~ao Robiatti, Diego Alves, Lucas Pascotti Valem, Maximilian Seeth, Sebasti\'an Ferrada, Ameeta Agrawal, Daniel Pedronette, Andr\'e Freitas

摘要

arXiv:2606.01482v1 Announce Type: new Abstract: Ensuring factuality and interpretability in RAG remains an open and urgent problem. We introduce Contrastive Evidence Rationale Attention (CERA), the first retrieval framework to employ subjectivity-based hard negative selection and inject an evidential inductive bias into contrastive learning through an auxiliary attention alignment loss. CERA fine-tunes a dense retriever using two training objectives: triplet-based contrastive learning and interpretable attention alignment, which supervises CLS-to-token attention using a part-of-speech-weighted masking distribution over human-annotated factual rationales as evidence signals. Experiments on a large corpus of clinical trial reports demonstrate that the subjectivity-based hard negative selection substantially improves retrieval effectiveness compared to both Contriever and hard negative selection baselines.

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