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Learning HTN Method Preconditions and Action Models from Partial Observations

机译:从部分观察中学习HTN方法前提条件和动作模型

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To apply hierarchical task network (HTN) planning to real-world planning problems, one needs to encode the HTN schemata and action models beforehand. However, acquiring such domain knowledge is difficult and time-consuming because the HTN domain definition involves a significant knowledge-engineering effort. A system that can learn the HTN planning domain knowledge automatically would save time and allow HTN planning to be used in domains where such knowledge-engineering effort is not feasible. In this paper, we present a formal framework and algorithms to acquire HTN planning domain knowledge, by learning the preconditions and effects of actions and preconditions of methods. Our algorithm, HTN-learner, first builds constraints from given observed decomposition trees to build action models and method preconditions. It then solves these constraints using a weighted MAX-SAT solver. The solution can be converted to action models and method preconditions. Unlike prior work on HTN learning, we do not depend on complete action models or state information. We test the algorithm on several domains, and show that our HTN-learner algorithm is both effective and efficient.
机译:要将分层任务网络(HTN)施加到现实世界的规划问题,需要事先对HTN模式和动作模型进行编码。然而,获取此类领域知识是困难且耗时的,因为HTN域定义涉及重要的知识工程努力。可以自动学习HTN规划域知识的系统将节省时间并允许HTN规划在这些知识工程工作不可行的域中使用。在本文中,我们展示了一项正式的框架和算法,通过了解方法的前提和对方法的前提和影响来获取HTN计划领域知识。我们的算法HTN-Learner首先构建由所观察到的分解树来构建动作模型和方法前提条件的约束。然后,它使用加权的MAX-SAT求解器来解决这些约束。可以将解决方案转换为动作模型和方法前提条件。与先前的HTN学习工作不同,我们不依赖于完整的行动模型或状态信息。我们在几个域上测试算法,并显示我们的HTN-Learner算法有效且有效。

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