Ask4VG: Risk-Aware Question Selection for Reducing Prior-Driven Answers in Medical VQA
Researchers have developed Ask4VG, a novel framework designed to mitigate hallucinated answers in medical visual question answering systems. This method identifies and prioritizes questions that are less likely to elicit visually unsupported responses by analyzing how model answers change when presented with altered or missing image data. By reranking questions based on this estimated risk, Ask4VG aims to improve the reliability and accuracy of medical VQA systems, as demonstrated by reductions in hallucination risk and gains in accuracy on benchmark datasets. AI
IMPACT Enhances reliability of AI in critical medical applications by reducing hallucinations.