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Learning Action Models for Multi-Agent Planning

机译:用于多智能经纪规划的学习动作模型

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摘要

In multi-agent planning environments, action models for each agent must be given as input. However, creating such action models by hand is difficult and time-consuming, because it requires formally representing the complex relationships among different objects in the environment. The problem is compounded in multi-agent environments where agents can take more types of actions. In this paper, we present an algorithm to learn action models for multi-agent planning systems from a set of input plan traces. Our learning algorithm Lammas automatically generates three kinds of constraints: (1) constraints on the interactions between agents, (2) constraints on the correctness of the action models for each individual agent, and (3) constraints on actions themselves. Lammas attempts to satisfy these constraints simultaneously using a weighted maximum satisfiability model known as MAX-SAT, and converts the solution into action models. We believe this to be one of the first learning algorithms to learn action models in the context of multi-agent planning environments. We empirically demonstrate that Lammas performs effectively and efficiently in several planning domains.
机译:在多代理规划环境中,必须给出每个代理的操作模型作为输入。然而,手动创建此类动作模型是困难且耗时的,因为它需要正式表示环境中不同对象之间的复杂关系。该问题在多种子体环境中复合,代理可以采取更多类型的行动。在本文中,我们提出了一种从一组输入计划迹线学习多智能经纪规划系统的动作模型的算法。我们的学习算法LAMMAS自动生成三种约束:(1)代理之间的交互的约束,(2)对每个单独代理的动作模型的正确性的约束,以及(3)对动作自身的约束。 LAMMAS尝试使用称为MAX-SAT的加权最大可加价型号同时满足这些约束,并将解决方案转换为动作模型。我们认为这是在多智能经纪规划环境中学习动作模型的第一个学习算法之一。我们经验证明碱度在几个规划域中有效且有效地表现。

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