Explore the intriguing concept of memory-regret tradeoff in online learning through this 55-minute lecture from the Simons Institute. Delve into the fundamental principles and challenges of balancing memory constraints with performance optimization in online learning algorithms. Gain insights into how researchers approach the problem of minimizing regret while working within limited memory resources. Discover the latest advancements and theoretical frameworks that address this crucial tradeoff, and understand their implications for practical applications in machine learning and artificial intelligence.
Overview
Syllabus
Memory-Regret Tradeoff for Online Learning
Taught by
Simons Institute