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1
- Intro & Overview
2
- Problem Statement
3
- Q-Learning Primer
4
- Multiple Rewards, Multiple Policies
5
- Example Environment
6
- Tasks as Linear Mixtures of Features
7
- Successor Features
8
- Zero-Shot Policy for New Tasks
9
- Results on New Task W3
10
- Inferring the Task via Regression
11
- The Influence of the Given Policies
12
- Learning the Feature Functions
13
- More Complicated Tasks
14
- Life-Long Learning, Comments & Conclusion
Description:
Explore a comprehensive video lecture on fast reinforcement learning with generalized policy updates. Dive into advanced concepts like successor features, zero-shot policies for new tasks, and task inference through regression. Learn how to leverage solutions from previous tasks to accelerate learning in new environments. Understand the potential of this approach for tackling complex sequential decision-making problems with reduced data requirements. Follow along as the lecturer breaks down the paper's key ideas, methodology, and results, providing insights into the future of reinforcement learning and its applications in artificial intelligence.

Fast Reinforcement Learning With Generalized Policy Updates - Paper Explained

Yannic Kilcher
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