Related Problem
The field of "related problems" encompasses diverse challenges in machine learning, optimization, and scientific computing, broadly focusing on improving the accuracy, efficiency, and robustness of algorithms and models. Current research emphasizes developing novel algorithms and model architectures, such as physics-informed neural networks, graph neural networks, and tensor neural networks, to address issues like out-of-distribution detection, handling of chance constraints in stochastic problems, and efficient solutions for high-dimensional or singularly perturbed systems. These advancements have significant implications for various applications, including resource management, AI safety, and scientific simulations, by enabling more reliable and efficient solutions to complex real-world problems.
Papers
Optimal Transport-inspired Deep Learning Framework for Slow-Decaying Problems: Exploiting Sinkhorn Loss and Wasserstein Kernel
Moaad Khamlich, Federico Pichi, Gianluigi Rozza
A Survey of Imbalanced Learning on Graphs: Problems, Techniques, and Future Directions
Zemin Liu, Yuan Li, Nan Chen, Qian Wang, Bryan Hooi, Bingsheng He