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on
1
Intro
2
Welcome
3
The Question
4
Two Fundamental Challenges
5
Aurora Driver
6
Programming Rules
7
Markov Decision Process
8
Challenges
9
Feedback Drives Covariate Shift
10
How common is this problem
11
Feedback driving covariate shift
12
Benchmarks
13
Infinite Data Limit
14
Hard Setting
15
Dagger
16
Interactive Expert
17
Expert Intervention Learning
18
Quantitative Plots
19
NonRealizable Expert
20
Simulation
21
Question Querying
22
Driving Simulators
23
Open Questions
24
Example
25
Grammar Modes
26
Merging Scenario
27
Transformer Net
28
Conclusion
Description:
Explore the challenges and advancements in interactive imitation learning for robots working alongside humans in this Stanford seminar. Dive into feedback-driven covariate shift and predicting human intent, examining unified distribution matching frameworks and graph neural network approaches. Learn how these methods contribute to self-driving technology deployed at scale. Discover solutions for adapting to individual human preferences, improving online learning, and understanding natural human interactions. Gain insights into the complexities of programming rules, Markov decision processes, and the limitations of infinite data. Analyze quantitative plots, non-realizable expert simulations, and driving simulators to understand the practical applications of these concepts. Conclude with an exploration of grammar modes, merging scenarios, and transformer networks in the context of interactive imitation learning.

Interactive Imitation Learning: Planning Alongside Humans

Stanford University
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