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Useful Policy Invariant Shaping from Arbitrary Advice

Useful Policy Invariant Shaping from Arbitrary Advice

2 November 2020
Paniz Behboudian
Yash Satsangi
Matthew E. Taylor
Anna Harutyunyan
Michael Bowling
    OffRL
ArXiv (abs)PDFHTML

Papers citing "Useful Policy Invariant Shaping from Arbitrary Advice"

6 / 6 papers shown
Title
Bandit-Based Policy Invariant Explicit Shaping for Incorporating
  External Advice in Reinforcement Learning
Bandit-Based Policy Invariant Explicit Shaping for Incorporating External Advice in Reinforcement Learning
Yash Satsangi
Paniz Behboudian
OffRL
45
0
0
14 Apr 2023
AutoCoMet: Smart Neural Architecture Search via Co-Regulated Shaping
  Reinforcement
AutoCoMet: Smart Neural Architecture Search via Co-Regulated Shaping Reinforcement
M. Das
Brijraj Singh
Harsh Chheda
Pawan Sharma
NS Pradeep
92
0
0
29 Mar 2022
ELLA: Exploration through Learned Language Abstraction
ELLA: Exploration through Learned Language Abstraction
Suvir Mirchandani
Siddharth Karamcheti
Dorsa Sadigh
LLMAG
77
58
0
10 Mar 2021
Improving Reinforcement Learning with Human Assistance: An Argument for
  Human Subject Studies with HIPPO Gym
Improving Reinforcement Learning with Human Assistance: An Argument for Human Subject Studies with HIPPO Gym
Matthew E. Taylor
Nicholas Nissen
Yuan Wang
N. Navidi
OffRL
28
5
0
02 Feb 2021
Human Engagement Providing Evaluative and Informative Advice for
  Interactive Reinforcement Learning
Human Engagement Providing Evaluative and Informative Advice for Interactive Reinforcement Learning
Adam Bignold
Francisco Cruz
Richard Dazeley
Peter Vamplew
Cameron Foale
84
18
0
21 Sep 2020
A Conceptual Framework for Externally-influenced Agents: An Assisted
  Reinforcement Learning Review
A Conceptual Framework for Externally-influenced Agents: An Assisted Reinforcement Learning Review
Adam Bignold
Francisco Cruz
Matthew E. Taylor
Tim Brys
Richard Dazeley
Peter Vamplew
Cameron Foale
92
31
0
03 Jul 2020
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