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 …
Reinforcement learning in deregulated energy market: A comprehensive review
The increasing penetration of renewable generations, along with the deregulation and
marketization of power industry, promotes the transformation of energy market operation …
marketization of power industry, promotes the transformation of energy market operation …
Decision making in multiagent systems: A survey
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 …
and analysis are some examples of the multiagent systems (MAS) that cooperate to achieve …
Probabilistic recursive reasoning for multi-agent reinforcement learning
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 …
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 …
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
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 …
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
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 …
expecting that their actions or goals will disambiguate their intentions. How can we build …
[HTML][HTML] Belief and truth in hypothesised behaviours
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 …
which each player maintains beliefs over a set of alternative behaviours, or types, for the …
Social interactions as recursive mdps
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 …
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
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 …
time and in ways that are nontrivial to predict. For example, if collaborative robots were …