Partially Observable Reinforcement Learning
Offered By: Pascal Poupart via YouTube
Course Description
Overview
Explore partial observable reinforcement learning in this 29-minute lecture from the CS885 course at the University of Waterloo. Delve into topics such as Partial Observable Markov Decisions, Hidden Markov Models, and Deep Recurrent Q Networks. Learn about belief monitoring, recurrent neural networks, and their applications in speech recognition. Gain insights into Markovian processes and long short-term memory networks. Access accompanying slides on the course website for a comprehensive understanding of this advanced machine learning concept.
Syllabus
Introduction
Partial Observable Markov Decisions
Reinforcement Learning Recap
Markovian Process
Hidden Markov Model
Speech Recognition
Markov Decision Processes
Belief Monitoring
Recurrent Neural Networks
Longshore Term Memory Networks
Deep Recurrent Q Network
Taught by
Pascal Poupart
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