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 …

Reinforcement learning in deregulated energy market: A comprehensive review

Z Zhu, Z Hu, KW Chan, S Bu, B Zhou, S Xia - Applied Energy, 2023 - Elsevier
The increasing penetration of renewable generations, along with the deregulation and
marketization of power industry, promotes the transformation of energy market operation …

Decision making in multiagent systems: A survey

Y Rizk, M Awad, EW Tunstel - IEEE Transactions on Cognitive …, 2018 - ieeexplore.ieee.org
Intelligent transport systems, efficient electric grids, and sensor networks for data collection
and analysis are some examples of the multiagent systems (MAS) that cooperate to achieve …

Probabilistic recursive reasoning for multi-agent reinforcement learning

Y Wen, Y Yang, R Luo, J Wang, W Pan - arXiv preprint arXiv:1901.09207, 2019 - arxiv.org
Humans are capable of attributing latent mental contents such as beliefs or intentions to
others. The social skill is critical in daily life for reasoning about the potential consequences …

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 …

[HTML][HTML] Affect control processes: Intelligent affective interaction using a partially observable Markov decision process

J Hoey, T Schröder, A Alhothali - Artificial Intelligence, 2016 - Elsevier
This paper describes a novel method for building affectively intelligent human-interactive
agents. The method is based on a key sociological insight that has been developed and …

Pragmatic Instruction Following and Goal Assistance via Cooperative Language-Guided Inverse Planning

T Zhi-Xuan, L Ying, V Mansinghka… - arXiv preprint arXiv …, 2024 - arxiv.org
People often give instructions whose meaning is ambiguous without further context,
expecting that their actions or goals will disambiguate their intentions. How can we build …

[HTML][HTML] Belief and truth in hypothesised behaviours

SV Albrecht, JW Crandall, S Ramamoorthy - Artificial Intelligence, 2016 - Elsevier
There is a long history in game theory on the topic of Bayesian or “rational” learning, in
which each player maintains beliefs over a set of alternative behaviours, or types, for the …

Social interactions as recursive mdps

R Tejwani, YL Kuo, T Shu, B Katz… - Conference on Robot …, 2022 - proceedings.mlr.press
While machines and robots must interact with humans, providing them with social skills has
been a largely overlooked topic. This is mostly a consequence of the fact that tasks such as …

Decision-theoretic planning with communication in open multiagent systems

A Kakarlapudi, G Anil, A Eck… - Uncertainty in …, 2022 - proceedings.mlr.press
In open multiagent systems, the set of agents operating in the environment changes over
time and in ways that are nontrivial to predict. For example, if collaborative robots were …