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1
Introduction
2
Partial Observable Markov Decisions
3
Reinforcement Learning Recap
4
Markovian Process
5
Hidden Markov Model
6
Speech Recognition
7
Markov Decision Processes
8
Belief Monitoring
9
Recurrent Neural Networks
10
Longshore Term Memory Networks
11
Deep Recurrent Q Network
Description:
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.

Partially Observable Reinforcement Learning

Pascal Poupart
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