Basics of Computational Reinforcement Learning
In machine learning, the problem of reinforcement learning is concerned with using experience gained through interacting with the world and evaluative feedback to improve a system’s ability to make behavioral decisions. This tutorial will introduce the fundamental concepts and vocabulary that underlie this field of study. It will also review recent advances in the theory and practice of reinforcement learning, including developments in fundamental technical areas such as generalization, planning, exploration and empirical methodology.
RELATED CATEGORIES
MORE VIDEOS FROM THE EVENT
2nd Multidisciplinary Conference on Reinforcement Learning and Decision Making (RLDM), Edmonton 2015