Autonomous agents modelling other agents: A comprehensive survey and open problems
SV Albrecht, P Stone - Artificial Intelligence, 2018 - Elsevier
Much research in artificial intelligence is concerned with the development of autonomous
agents that can interact effectively with other agents. An important aspect of such agents is …
agents that can interact effectively with other agents. An important aspect of such agents is …
Agent-based simulation-an application to the new electricity trading arrangements of England and Wales
DW Bunn, FS Oliveira - IEEE transactions on Evolutionary …, 2001 - ieeexplore.ieee.org
This paper presents a large-scale application of multiagent evolutionary modeling to the
proposed new electricity trading arrangements (NETA) in the UK. This is a detailed plant-by …
proposed new electricity trading arrangements (NETA) in the UK. This is a detailed plant-by …
A survey of opponent modeling in adversarial domains
S Nashed, S Zilberstein - Journal of Artificial Intelligence Research, 2022 - jair.org
Opponent modeling is the ability to use prior knowledge and observations in order to predict
the behavior of an opponent. This survey presents a comprehensive overview of existing …
the behavior of an opponent. This survey presents a comprehensive overview of existing …
Learning in multiagent systems
Learning and intelligence are intimately related to each other. It is usually agreed that a
system capable of learning deserves to be called intelligent; and conversely, a system being …
system capable of learning deserves to be called intelligent; and conversely, a system being …
Multi-agent multi-user modeling in I-Help
This paper describesthe user modeling approach applied in I-Help, a distributed multi-agent
based collaborative environment for peer help. There is a multitude of user modeling …
based collaborative environment for peer help. There is a multitude of user modeling …
Reasoning about hypothetical agent behaviours and their parameters
SV Albrecht, P Stone - arXiv preprint arXiv:1906.11064, 2019 - arxiv.org
Agents can achieve effective interaction with previously unknown other agents by
maintaining beliefs over a set of hypothetical behaviours, or types, that these agents may …
maintaining beliefs over a set of hypothetical behaviours, or types, that these agents may …
面向多智能体博弈对抗的对手建模框架
罗俊仁, 张万鹏, 袁唯淋, 胡振震, 陈少飞… - 系统仿真学报, 2022 - china-simulation.com
对手建模作为多智能体博弈对抗的关键技术, 是一种典型的智能体认知行为建模方法.
介绍了多智能体博弈对抗几类典型模型, 非平稳问题和元博弈相关理论; 梳理总结对手建模方法 …
介绍了多智能体博弈对抗几类典型模型, 非平稳问题和元博弈相关理论; 梳理总结对手建模方法 …
Rational coordination in multi-agent environments
PJ Gmytrasiewicz, EH Durfee - Autonomous Agents and Multi-Agent …, 2000 - Springer
We adopt the decision-theoretic principle of expected utility maximization as a paradigm for
designing autonomous rational agents, and present a framework that uses this paradigm to …
designing autonomous rational agents, and present a framework that uses this paradigm to …
Computing robust counter-strategies
M Johanson, M Zinkevich… - Advances in neural …, 2007 - proceedings.neurips.cc
Adaptation to other initially unknown agents often requires computing an effective counter-
strategy. In the Bayesian paradigm, one must find a good counter-strategy to the inferred …
strategy. In the Bayesian paradigm, one must find a good counter-strategy to the inferred …
Learning models of other agents using influence diagrams
D Suryadi, PJ Gmytrasiewicz - UM99 User Modeling: Proceedings of the …, 1999 - Springer
We adopt decision theory as a descriptive paradigm to model rational agents. We use
influence diagrams as a modeling representation of agents, which is used to interact with …
influence diagrams as a modeling representation of agents, which is used to interact with …