Real World Data
Real-world data (RWD) research focuses on leveraging data from real-world settings to train and evaluate machine learning models, addressing limitations of idealized datasets. Current efforts concentrate on developing methods to handle the complexities of RWD, including missing data, noise, and biases, often employing techniques like knowledge distillation, variational inference, and generative models (e.g., diffusion models) to improve model performance and robustness. This research is crucial for bridging the gap between theoretical advancements and practical applications across diverse fields, from healthcare and autonomous driving to finance and environmental sustainability, enabling more reliable and impactful AI systems.
Papers
November 14, 2024
November 6, 2024
October 31, 2024
October 29, 2024
October 11, 2024
October 10, 2024
October 2, 2024
September 29, 2024
September 25, 2024
September 22, 2024
September 3, 2024
July 15, 2024
July 14, 2024
June 19, 2024
June 14, 2024
June 13, 2024
April 7, 2024
March 28, 2024