Learning of Agent Capability Models with Applications in Multi-agent Planning
Yu Zhang, Subbarao Kambhampati

TL;DR
This paper introduces capability models for agent modeling, enabling efficient online learning from incomplete data, which enhances multi-agent planning by providing flexible and robust abstractions of agent capabilities.
Contribution
The paper proposes a novel capability model representation for agents, demonstrating efficient Bayesian learning from incomplete traces and applications in multi-agent planning.
Findings
Capability models can be learned efficiently online.
They are robust to high incompleteness in plan traces.
Useful in applications like robot learning human models.
Abstract
One important challenge for a set of agents to achieve more efficient collaboration is for these agents to maintain proper models of each other. An important aspect of these models of other agents is that they are often partial and incomplete. Thus far, there are two common representations of agent models: MDP based and action based, which are both based on action modeling. In many applications, agent models may not have been given, and hence must be learnt. While it may seem convenient to use either MDP based or action based models for learning, in this paper, we introduce a new representation based on capability models, which has several unique advantages. First, we show that learning capability models can be performed efficiently online via Bayesian learning, and the learning process is robust to high degrees of incompleteness in plan execution traces (e.g., with only start and end…
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Taxonomy
TopicsAI-based Problem Solving and Planning · Reinforcement Learning in Robotics · Multi-Agent Systems and Negotiation
