Recent Advances in Functional Optimization
Offered By: GERAD Research Center via YouTube
Course Description
Overview
Explore recent advancements in functional optimization through this insightful 59-minute conference talk by Nicolas Le Roux from Microsoft, MILA, McGill University, and Université de Montréal. Delve into the argument for analyzing optimization problems in function space rather than parameter space, as traditionally done in classical continuous optimization. Discover new theoretical results and innovative practical algorithms applied to standard problems in reinforcement learning and supervised learning. Gain valuable insights into this evolving field of study and its potential implications for various machine learning applications.
Syllabus
Recent Advances in Functional Optimization, Nicolas Le Roux
Taught by
GERAD Research Center
Related Courses
Computational NeuroscienceUniversity of Washington via Coursera Reinforcement Learning
Brown University via Udacity Reinforcement Learning
Indian Institute of Technology Madras via Swayam FA17: Machine Learning
Georgia Institute of Technology via edX Introduction to Reinforcement Learning
Higher School of Economics via Coursera