Counterfactual Reasoning for Fine-Grained Evidence Disentanglement in VideoQA
用于视频问答中细粒度证据分离的反事实推理
发表机构 * School of OptoElectonic Science and Engineering, University of Electronic Science and Technology of China(电子科技大学光电科学与工程学院)
AI总结 提出反事实推理框架CREDiT,通过结构因果模型将视频问答中的跨模态表示分解为因果和非因果成分,在独立性约束下进行特征级因果干预,提升答案准确性和推理可靠性。
Comments 10 pages, 6 figures