Novel Algorithm
Recent research on novel algorithms spans diverse applications, focusing on improving efficiency, accuracy, and robustness across various domains. Key areas include developing algorithms for efficient optimization problems (e.g., K-medoids, bilevel optimization), enhancing machine learning model performance (e.g., through improved uncertainty quantification, unlearning, and data generation), and addressing challenges in specific fields like recommender systems and exoplanet detection. These advancements have significant implications for data analysis, machine learning, and scientific discovery, offering more efficient and reliable solutions to complex problems.
Papers
Simple online learning with consistent oracle
Alexander Kozachinskiy, Tomasz Steifer
Planning to Learn: A Novel Algorithm for Active Learning during Model-Based Planning
Rowan Hodson, Bruce Bassett, Charel van Hoof, Benjamin Rosman, Mark Solms, Jonathan P. Shock, Ryan Smith
ERA*: Enhanced Relaxed A* algorithm for Solving the Shortest Path Problem in Regular Grid Maps
Adel Ammar