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Contingency-Aware Exploration in Reinforcement Learning

Contingency-Aware Exploration in Reinforcement Learning

5 November 2018
Jongwook Choi
Yijie Guo
Marcin Moczulski
Junhyuk Oh
Neal Wu
Mohammad Norouzi
Honglak Lee
ArXivPDFHTML

Papers citing "Contingency-Aware Exploration in Reinforcement Learning"

18 / 18 papers shown
Title
Attacking and Defending Deep Reinforcement Learning Policies
Attacking and Defending Deep Reinforcement Learning Policies
Chao Wang
AAML
36
2
0
16 May 2022
Exploration in Deep Reinforcement Learning: A Survey
Exploration in Deep Reinforcement Learning: A Survey
Pawel Ladosz
Lilian Weng
Minwoo Kim
H. Oh
OffRL
26
324
0
02 May 2022
Generative Adversarial Exploration for Reinforcement Learning
Generative Adversarial Exploration for Reinforcement Learning
Weijun Hong
Menghui Zhu
Minghuan Liu
Weinan Zhang
Ming Zhou
Yong Yu
Peng Sun
OnRL
39
7
0
27 Jan 2022
Exploration in Deep Reinforcement Learning: From Single-Agent to
  Multiagent Domain
Exploration in Deep Reinforcement Learning: From Single-Agent to Multiagent Domain
Jianye Hao
Tianpei Yang
Hongyao Tang
Chenjia Bai
Jinyi Liu
Zhaopeng Meng
Peng Liu
Zhen Wang
OffRL
36
93
0
14 Sep 2021
Shortest-Path Constrained Reinforcement Learning for Sparse Reward Tasks
Shortest-Path Constrained Reinforcement Learning for Sparse Reward Tasks
Sungryull Sohn
Sungtae Lee
Jongwook Choi
H. V. Seijen
Mehdi Fatemi
Honglak Lee
170
3
0
13 Jul 2021
Learning Markov State Abstractions for Deep Reinforcement Learning
Learning Markov State Abstractions for Deep Reinforcement Learning
Cameron Allen
Neev Parikh
Omer Gottesman
George Konidaris
BDL
OffRL
34
36
0
08 Jun 2021
Did I do that? Blame as a means to identify controlled effects in
  reinforcement learning
Did I do that? Blame as a means to identify controlled effects in reinforcement learning
Oriol Corcoll
Youssef Mohamed
Raul Vicente
24
3
0
01 Jun 2021
Linear Disentangled Representations and Unsupervised Action Estimation
Linear Disentangled Representations and Unsupervised Action Estimation
Matthew Painter
Jonathon S. Hare
Adam Prugel-Bennett
CoGe
DRL
39
20
0
18 Aug 2020
Learning Abstract Models for Strategic Exploration and Fast Reward
  Transfer
Learning Abstract Models for Strategic Exploration and Fast Reward Transfer
E. Liu
Ramtin Keramati
Sudarshan Seshadri
Kelvin Guu
Panupong Pasupat
Emma Brunskill
Percy Liang
OffRL
27
5
0
12 Jul 2020
SUNRISE: A Simple Unified Framework for Ensemble Learning in Deep
  Reinforcement Learning
SUNRISE: A Simple Unified Framework for Ensemble Learning in Deep Reinforcement Learning
Kimin Lee
Michael Laskin
A. Srinivas
Pieter Abbeel
OffRL
25
199
0
09 Jul 2020
First return, then explore
First return, then explore
Adrien Ecoffet
Joost Huizinga
Joel Lehman
Kenneth O. Stanley
Jeff Clune
47
351
0
27 Apr 2020
Agent57: Outperforming the Atari Human Benchmark
Agent57: Outperforming the Atari Human Benchmark
Adria Puigdomenech Badia
Bilal Piot
Steven Kapturowski
Pablo Sprechmann
Alex Vitvitskyi
Daniel Guo
Charles Blundell
OffRL
29
510
0
30 Mar 2020
Disentangling Controllable Object through Video Prediction Improves
  Visual Reinforcement Learning
Disentangling Controllable Object through Video Prediction Improves Visual Reinforcement Learning
Yuanyi Zhong
Alex Schwing
Jian Peng
DRL
15
5
0
21 Feb 2020
Learning Compact Models for Planning with Exogenous Processes
Learning Compact Models for Planning with Exogenous Processes
Rohan Chitnis
Tomás Lozano-Pérez
27
20
0
30 Sep 2019
Supervise Thyself: Examining Self-Supervised Representations in
  Interactive Environments
Supervise Thyself: Examining Self-Supervised Representations in Interactive Environments
Evan Racah
C. Pal
SSL
27
2
0
27 Jun 2019
Unsupervised State Representation Learning in Atari
Unsupervised State Representation Learning in Atari
Ankesh Anand
Evan Racah
Sherjil Ozair
Yoshua Bengio
Marc-Alexandre Côté
R. Devon Hjelm
SSL
44
254
0
19 Jun 2019
Go-Explore: a New Approach for Hard-Exploration Problems
Go-Explore: a New Approach for Hard-Exploration Problems
Adrien Ecoffet
Joost Huizinga
Joel Lehman
Kenneth O. Stanley
Jeff Clune
AI4TS
24
362
0
30 Jan 2019
Towards Governing Agent's Efficacy: Action-Conditional $β$-VAE for
  Deep Transparent Reinforcement Learning
Towards Governing Agent's Efficacy: Action-Conditional βββ-VAE for Deep Transparent Reinforcement Learning
John Yang
Gyujeong Lee
Minsung Hyun
Simyung Chang
Nojun Kwak
29
3
0
11 Nov 2018
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