This article addresses the challenge of planning coordinated activities for a set of autonomous agents, who coordinate according to social commitments among themselves. We develop a multi-agent plan in the form of a commitment protocol that allows the agents to coordinate in a flexible manner, retaining their autonomy in terms of the goals they adopt so long as their actions adhere to the commitments they have made. We consider an expressive first-order setting with probabilistic uncertainty over action outcomes. We contribute the first practical means to derive protocol enactments which maximise expected utility from the point of view of one agent. Our work makes two main contributions. First, we show how Hierarchical Task Network planning...
Distributed Artificial Intelligence systems, in which multiple agents interact to improve their indi...
This paper develops and evaluates a new decision theoretic framework in which autonomous agents can ...
Task-based planning problems for multi-agent systems require multiple agents to find a joint plan fo...
We consider the problem of relating an agent’s internal state (its beliefs and goals) and its social...
Commitments help model interactions in multiagent systems in a computationally realizable yet high-l...
Social commitment protocols regulate interactions of agents in multiagent systems. Several methods h...
Commitment-modeled protocols enable flexible and robust interactions among agents. However, existing...
Protocols represent the allowed interactions among communicat-ing agents. Protocols are essential in...
Commitments play a central role in multi-agent coordination. However, they are inherently uncertain ...
In cooperative multiagent planning, it can often be beneficial for an agent to make commitments abou...
Interaction is a fundamental part of multiagent systems, and is usu-ally regulated by protocols. Typ...
The notion of commitment is widely studied as a high-level abstraction for modeling multiagent inter...
Commitment protocols provide an effective formalism for the regulation of agent interaction. Althoug...
Commitments capture how an agent relates to another agent, whereas goals describe states of the worl...
In a cooperative system, multiple dynamic entities work together and share their resources to achiev...
Distributed Artificial Intelligence systems, in which multiple agents interact to improve their indi...
This paper develops and evaluates a new decision theoretic framework in which autonomous agents can ...
Task-based planning problems for multi-agent systems require multiple agents to find a joint plan fo...
We consider the problem of relating an agent’s internal state (its beliefs and goals) and its social...
Commitments help model interactions in multiagent systems in a computationally realizable yet high-l...
Social commitment protocols regulate interactions of agents in multiagent systems. Several methods h...
Commitment-modeled protocols enable flexible and robust interactions among agents. However, existing...
Protocols represent the allowed interactions among communicat-ing agents. Protocols are essential in...
Commitments play a central role in multi-agent coordination. However, they are inherently uncertain ...
In cooperative multiagent planning, it can often be beneficial for an agent to make commitments abou...
Interaction is a fundamental part of multiagent systems, and is usu-ally regulated by protocols. Typ...
The notion of commitment is widely studied as a high-level abstraction for modeling multiagent inter...
Commitment protocols provide an effective formalism for the regulation of agent interaction. Althoug...
Commitments capture how an agent relates to another agent, whereas goals describe states of the worl...
In a cooperative system, multiple dynamic entities work together and share their resources to achiev...
Distributed Artificial Intelligence systems, in which multiple agents interact to improve their indi...
This paper develops and evaluates a new decision theoretic framework in which autonomous agents can ...
Task-based planning problems for multi-agent systems require multiple agents to find a joint plan fo...