Filling Gap
"Filling gaps" encompasses a broad range of research addressing incomplete or missing data across diverse fields. Current efforts focus on developing robust algorithms and models, including neural networks (e.g., variational autoencoders, generative adversarial networks), to effectively reconstruct missing information in various data types (e.g., code, images, point clouds, time series). These advancements are crucial for improving the accuracy and reliability of analyses in numerous applications, from healthcare diagnostics and autonomous systems to natural language processing and 3D reconstruction. The ultimate goal is to create more complete and reliable datasets and models, leading to more accurate and insightful results across scientific disciplines and practical applications.
Papers
Towards Clinical AI Fairness: Filling Gaps in the Puzzle
Mingxuan Liu, Yilin Ning, Salinelat Teixayavong, Xiaoxuan Liu, Mayli Mertens, Yuqing Shang, Xin Li, Di Miao, Jie Xu, Daniel Shu Wei Ting, Lionel Tim-Ee Cheng, Jasmine Chiat Ling Ong, Zhen Ling Teo, Ting Fang Tan, Narrendar RaviChandran, Fei Wang, Leo Anthony Celi, Marcus Eng Hock Ong, Nan Liu
The Widening Gap: The Benefits and Harms of Generative AI for Novice Programmers
James Prather, Brent Reeves, Juho Leinonen, Stephen MacNeil, Arisoa S. Randrianasolo, Brett Becker, Bailey Kimmel, Jared Wright, Ben Briggs
Stitching Gaps: Fusing Situated Perceptual Knowledge with Vision Transformers for High-Level Image Classification
Delfina Sol Martinez Pandiani, Nicolas Lazzari, Valentina Presutti
BlockEcho: Retaining Long-Range Dependencies for Imputing Block-Wise Missing Data
Qiao Han, Mingqian Li, Yao Yang, Yiteng Zhai