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Reasoning about Hypothetical Agent Behaviours and their Parameters

Reasoning about Hypothetical Agent Behaviours and their Parameters

26 June 2019
Stefano V. Albrecht
Peter Stone
ArXiv (abs)PDFHTML

Papers citing "Reasoning about Hypothetical Agent Behaviours and their Parameters"

26 / 26 papers shown
Title
Enhancing Cooperative Multi-Agent Reinforcement Learning with State Modelling and Adversarial Exploration
Enhancing Cooperative Multi-Agent Reinforcement Learning with State Modelling and Adversarial Exploration
Andreas Kontogiannis
Konstantinos Papathanasiou
Yi Shen
Giorgos Stamou
Michael M. Zavlanos
G. Vouros
66
0
0
08 May 2025
Seldonian Reinforcement Learning for Ad Hoc Teamwork
Edoardo Zorzi
A. Castellini
Leonidas Bakopoulos
Georgios Chalkiadakis
Alessandro Farinelli
OffRL
97
0
0
05 Mar 2025
On Diagnostics for Understanding Agent Training Behaviour in Cooperative
  MARL
On Diagnostics for Understanding Agent Training Behaviour in Cooperative MARL
Wiem Khlifi
Siddarth S. Singh
Omayma Mahjoub
Ruan de Kock
Abidine Vall
R. Gorsane
Arnu Pretorius
107
1
0
13 Dec 2023
How much can change in a year? Revisiting Evaluation in Multi-Agent
  Reinforcement Learning
How much can change in a year? Revisiting Evaluation in Multi-Agent Reinforcement Learning
Siddarth S. Singh
Omayma Mahjoub
Ruan de Kock
Wiem Khlifi
Abidine Vall
Kale-ab Tessera
Arnu Pretorius
106
1
0
13 Dec 2023
(Ir)rationality in AI: State of the Art, Research Challenges and Open Questions
(Ir)rationality in AI: State of the Art, Research Challenges and Open Questions
Olivia Macmillan-Scott
Mirco Musolesi
96
1
0
28 Nov 2023
Who Needs to Know? Minimal Knowledge for Optimal Coordination
Who Needs to Know? Minimal Knowledge for Optimal Coordination
Niklas Lauffer
Ameesh Shah
Micah Carroll
Michael Dennis
Stuart J. Russell
59
6
0
15 Jun 2023
Combining a Meta-Policy and Monte-Carlo Planning for Scalable Type-Based
  Reasoning in Partially Observable Environments
Combining a Meta-Policy and Monte-Carlo Planning for Scalable Type-Based Reasoning in Partially Observable Environments
Jonathon Schwartz
H. Kurniawati
Marcus Hutter
OffRLLRM
60
0
0
09 Jun 2023
Presenting Multiagent Challenges in Team Sports Analytics
Presenting Multiagent Challenges in Team Sports Analytics
David Radke
Alexi Orchard
AI4CE
75
6
0
23 Mar 2023
Decision-making with Speculative Opponent Models
Decision-making with Speculative Opponent Models
Jing-rong Sun
Shuo Chen
Cong Zhang
Yining Ma
Jie Zhang
64
1
0
22 Nov 2022
A General Learning Framework for Open Ad Hoc Teamwork Using Graph-based
  Policy Learning
A General Learning Framework for Open Ad Hoc Teamwork Using Graph-based Policy Learning
Arrasy Rahman
Ignacio Carlucho
Niklas Höpner
Stefano V. Albrecht
112
11
0
11 Oct 2022
Few-Shot Teamwork
Few-Shot Teamwork
Elliot Fosong
Arrasy Rahman
Ignacio Carlucho
Stefano V. Albrecht
33
4
0
19 Jul 2022
COLA: Consistent Learning with Opponent-Learning Awareness
COLA: Consistent Learning with Opponent-Learning Awareness
Timon Willi
Alistair Letcher
Johannes Treutlein
Jakob N. Foerster
70
52
0
08 Mar 2022
LINDA: Multi-Agent Local Information Decomposition for Awareness of
  Teammates
LINDA: Multi-Agent Local Information Decomposition for Awareness of Teammates
Jiahan Cao
Lei Yuan
Jianhao Wang
Shaowei Zhang
Chongjie Zhang
Yang Yu
De-Chuan Zhan
99
20
0
26 Sep 2021
Show Me What You Can Do: Capability Calibration on Reachable Workspace
  for Human-Robot Collaboration
Show Me What You Can Do: Capability Calibration on Reachable Workspace for Human-Robot Collaboration
Xiaofeng Gao
Luyao Yuan
Tianmin Shu
Hongjing Lu
Song-Chun Zhu
44
4
0
06 Mar 2021
Expected Value of Communication for Planning in Ad Hoc Teamwork
Expected Value of Communication for Planning in Ad Hoc Teamwork
William Macke
Reuth Mirsky
Peter Stone
85
25
0
01 Mar 2021
Deep Interactive Bayesian Reinforcement Learning via Meta-Learning
Deep Interactive Bayesian Reinforcement Learning via Meta-Learning
L. Zintgraf
Sam Devlin
K. Ciosek
Shimon Whiteson
Katja Hofmann
BDL
67
45
0
11 Jan 2021
Altruistic Decision-Making for Autonomous Driving with Sparse Rewards
Altruistic Decision-Making for Autonomous Driving with Sparse Rewards
Jack Geary
Henry Gouk
44
1
0
14 Jul 2020
Towards Open Ad Hoc Teamwork Using Graph-based Policy Learning
Towards Open Ad Hoc Teamwork Using Graph-based Policy Learning
Arrasy Rahman
Niklas Höpner
Filippos Christianos
Stefano V. Albrecht
73
58
0
18 Jun 2020
Agent Modelling under Partial Observability for Deep Reinforcement
  Learning
Agent Modelling under Partial Observability for Deep Reinforcement Learning
Georgios Papoudakis
Filippos Christianos
Stefano V. Albrecht
105
66
0
16 Jun 2020
Benchmarking Multi-Agent Deep Reinforcement Learning Algorithms in
  Cooperative Tasks
Benchmarking Multi-Agent Deep Reinforcement Learning Algorithms in Cooperative Tasks
Georgios Papoudakis
Filippos Christianos
Lukas Schafer
Stefano V. Albrecht
OffRL
105
233
0
14 Jun 2020
Shared Experience Actor-Critic for Multi-Agent Reinforcement Learning
Shared Experience Actor-Critic for Multi-Agent Reinforcement Learning
Filippos Christianos
Lukas Schafer
Stefano V. Albrecht
133
169
0
12 Jun 2020
Robust Stochastic Bayesian Games for Behavior Space Coverage
Robust Stochastic Bayesian Games for Behavior Space Coverage
Julian Bernhard
Alois Knoll
124
3
0
25 Mar 2020
Learning Sharing Behaviors with Arbitrary Numbers of Agents
Learning Sharing Behaviors with Arbitrary Numbers of Agents
Katherine Metcalf
B. Theobald
N. Apostoloff
25
2
0
10 Dec 2018
Multi-Agent Common Knowledge Reinforcement Learning
Multi-Agent Common Knowledge Reinforcement Learning
Christian Schroeder de Witt
Jakob N. Foerster
Gregory Farquhar
Philip Torr
Wendelin Bohmer
Shimon Whiteson
102
108
0
27 Oct 2018
Autonomous Agents Modelling Other Agents: A Comprehensive Survey and
  Open Problems
Autonomous Agents Modelling Other Agents: A Comprehensive Survey and Open Problems
Stefano V. Albrecht
Peter Stone
165
475
0
23 Sep 2017
Exploiting Causality for Selective Belief Filtering in Dynamic Bayesian
  Networks
Exploiting Causality for Selective Belief Filtering in Dynamic Bayesian Networks
Stefano V. Albrecht
S. Ramamoorthy
154
23
0
30 Jan 2014
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