Question Answer Pair
Question-answer pairs (QAPs) are fundamental to evaluating and improving various AI models, particularly large language models (LLMs), across diverse domains like commonsense reasoning, finance, and scientific literature. Current research focuses on developing robust QAP datasets reflecting real-world complexities, including multimodal data (images, charts) and nuanced language, and on employing techniques like retrieval-augmented generation (RAG) and chain-of-thought prompting to enhance model performance and interpretability. The creation and utilization of high-quality QAPs are crucial for benchmarking progress, identifying model limitations, and ultimately driving the development of more accurate, reliable, and explainable AI systems with broader applications.
Papers
Weakly Supervised Visual Question Answer Generation
Charani Alampalle, Shamanthak Hegde, Soumya Jahagirdar, Shankar Gangisetty
Towards Diverse and Effective Question-Answer Pair Generation from Children Storybooks
Sugyeong Eo, Hyeonseok Moon, Jinsung Kim, Yuna Hur, Jeongwook Kim, Songeun Lee, Changwoo Chun, Sungsoo Park, Heuiseok Lim