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Stabilizing Unsupervised Environment Design with a Learned Adversary
v1v2 (latest)

Stabilizing Unsupervised Environment Design with a Learned Adversary

21 August 2023
Ishita Mediratta
Minqi Jiang
Jack Parker-Holder
Michael Dennis
Eugene Vinitsky
Tim Rocktaschel
ArXiv (abs)PDFHTML

Papers citing "Stabilizing Unsupervised Environment Design with a Learned Adversary"

13 / 13 papers shown
Title
TRACED: Transition-aware Regret Approximation with Co-learnability for Environment Design
TRACED: Transition-aware Regret Approximation with Co-learnability for Environment Design
Geonwoo Cho
Jaegyun Im
Jihwan Lee
Hojun Yi
Sejin Kim
Sundong Kim
186
0
0
24 Jun 2025
Cross-environment Cooperation Enables Zero-shot Multi-agent Coordination
Cross-environment Cooperation Enables Zero-shot Multi-agent Coordination
Kunal Jha
Wilka Carvalho
Yancheng Liang
S. Du
Max Kleiman-Weiner
Natasha Jaques
378
8
0
17 Apr 2025
Improving Environment Novelty Quantification for Effective Unsupervised Environment DesignNeural Information Processing Systems (NeurIPS), 2025
Jayden Teoh
Wenjun Li
Pradeep Varakantham
266
4
0
08 Feb 2025
Eurekaverse: Environment Curriculum Generation via Large Language Models
Eurekaverse: Environment Curriculum Generation via Large Language ModelsConference on Robot Learning (CoRL), 2024
William Liang
Sam Wang
Hung-Ju Wang
Osbert Bastani
Dinesh Jayaraman
Yecheng Jason Ma
SyDa
310
4
0
04 Nov 2024
Adversarial Environment Design via Regret-Guided Diffusion Models
Adversarial Environment Design via Regret-Guided Diffusion ModelsNeural Information Processing Systems (NeurIPS), 2024
Hojun Chung
Junseo Lee
Minsoo Kim
Dohyeong Kim
Songhwai Oh
322
6
0
25 Oct 2024
No Regrets: Investigating and Improving Regret Approximations for
  Curriculum Discovery
No Regrets: Investigating and Improving Regret Approximations for Curriculum DiscoveryNeural Information Processing Systems (NeurIPS), 2024
Alexander Rutherford
Michael Beukman
Timon Willi
Bruno Lacerda
Nick Hawes
Jakob Foerster
313
19
0
27 Aug 2024
Autoverse: An Evolvable Game Language for Learning Robust Embodied
  Agents
Autoverse: An Evolvable Game Language for Learning Robust Embodied Agents
Sam Earle
Julian Togelius
281
1
0
05 Jul 2024
The Overcooked Generalisation Challenge: Evaluating Cooperation with Novel Partners in Unknown Environments Using Unsupervised Environment Design
The Overcooked Generalisation Challenge: Evaluating Cooperation with Novel Partners in Unknown Environments Using Unsupervised Environment Design
Constantin Ruhdorfer
Matteo Bortoletto
Anna Penzkofer
Andreas Bulling
374
8
0
25 Jun 2024
Scenario-Based Curriculum Generation for Multi-Agent Autonomous Driving
Scenario-Based Curriculum Generation for Multi-Agent Autonomous Driving
Axel Brunnbauer
Luigi Berducci
P. Priller
D. Ničković
Radu Grosu
311
3
0
26 Mar 2024
JaxUED: A simple and useable UED library in Jax
JaxUED: A simple and useable UED library in Jax
Samuel Coward
Michael Beukman
Jakob Foerster
181
8
0
19 Mar 2024
Refining Minimax Regret for Unsupervised Environment Design
Refining Minimax Regret for Unsupervised Environment Design
Michael Beukman
Samuel Coward
Michael T. Matthews
Mattie Fellows
Minqi Jiang
Michael Dennis
Jakob Foerster
283
14
0
19 Feb 2024
Multi-Agent Diagnostics for Robustness via Illuminated Diversity
Multi-Agent Diagnostics for Robustness via Illuminated DiversityAdaptive Agents and Multi-Agent Systems (AAMAS), 2024
Mikayel Samvelyan
Davide Paglieri
Minqi Jiang
Jack Parker-Holder
Tim Rocktaschel
AAML
289
5
0
24 Jan 2024
minimax: Efficient Baselines for Autocurricula in JAX
minimax: Efficient Baselines for Autocurricula in JAX
Minqi Jiang
Michael Dennis
Edward Grefenstette
Tim Rocktaschel
273
11
0
21 Nov 2023
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