Learning Algorithm
Learning algorithms are computational methods designed to automatically improve performance on a task through experience, aiming to create models that generalize well to unseen data. Current research emphasizes developing algorithms with improved efficiency and robustness, particularly in distributed and continual learning settings, exploring architectures like graph neural networks, transformers, and variations of gradient descent. These advancements are crucial for addressing challenges in diverse fields, including autonomous systems, healthcare, and scientific discovery, by enabling more efficient and reliable data analysis and decision-making.
Papers
Learning to optimize with convergence guarantees using nonlinear system theory
Andrea Martin, Luca Furieri
Learning Algorithms for Verification of Markov Decision Processes
Tomáš Brázdil, Krishnendu Chatterjee, Martin Chmelik, Vojtěch Forejt, Jan Křetínský, Marta Kwiatkowska, Tobias Meggendorfer, David Parker, Mateusz Ujma