Near Optimal Algorithm
Near-optimal algorithms aim to achieve solutions that are provably close to the best possible, addressing the computational limitations of finding exact optima in complex problems. Current research focuses on developing such algorithms for diverse applications, including reinforcement learning (with a focus on robust and safe learning), optimization (covering convex, non-convex, smooth, and non-smooth problems, often with constraints), and machine learning (e.g., clustering, quantization, and multi-armed bandits). These advancements offer improved efficiency and theoretical guarantees, impacting fields ranging from robotics and healthcare to data analysis and resource allocation.
Papers
February 2, 2022
January 24, 2022