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1
Intro
2
Overview
3
Approximation
4
Optimization
5
QLearning
6
QLearning Recap
7
Gradient QLearning
8
Divergence
9
Experience Replay
10
Gradient Descent
11
Target Network
12
Deep Queue Network
13
Deep Queue Network Algorithm
14
Deep Queue Network Architecture
15
Deep Queue Network Results
Description:
Explore deep Q-networks in this comprehensive 41-minute lecture by Pascal Poupart. Delve into key concepts including approximation, optimization, Q-learning, gradient Q-learning, and experience replay. Learn about divergence issues and their solutions, gradient descent techniques, and the implementation of target networks. Discover the architecture and algorithm behind deep Q-networks, and examine their performance results in various applications.

Deep Q-Networks

Pascal Poupart
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