BELIEF: Structured Evidence Modeling and Uncertainty-Aware Fusion for Biomedical Question Answering
Chang Zong,Hao Ning,Siliang Tang,Jie Huang,Jian Wan

TL;DR
BELIEF introduces a structured evidence modeling framework that enhances biomedical question answering by explicitly representing evidence attributes and integrating symbolic and neural reasoning paths with uncertainty awareness.
Contribution
It presents a novel framework combining structured evidence objects with symbolic and neural reasoning, improving evidence utilization and uncertainty handling in biomedical QA.
Findings
BELIEF achieves top results in 25 of 30 settings across datasets and backbones.
Structured evidence modeling improves evidence utilization and decision confidence.
Combining symbolic and neural paths enhances answer accuracy and uncertainty estimation.
Abstract
Biomedical question answering often requires decisions from retrieved literature whose relevance, quality, and support for candidate answers are uneven. Most retrieval-augmented large language model (LLM) methods feed this literature to the model as flat text, leaving evidence reliability and remaining uncertainty largely implicit. We propose BELIEF, a structured evidence modeling and uncertainty-aware fusion framework for closed-set biomedical question answering. Rather than treating retrieved documents as undifferentiated context, BELIEF converts them into evidence objects that record clinical attributes, source quality, question relevance, support strength, and the associated candidate hypothesis. These evidence objects provide a shared basis for two complementary reasoning paths. The symbolic path constructs reliability-weighted basic probability assignments based on…
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