Although there have been approaches that are capable of learning action models from plan traces, there is no work on learning action models from textual observations, which is pervasive and much easier to collect from real-world applications compared to plan traces. In this paper we propose a novel approach to learning action models from natural language texts by integrating Constraint Satisfaction and Natural Language Processing techniques. Specifically, we first build a novel language model to extract plan traces from texts, and then build a set of constraints to generate action models based on the extracted plan traces. After that, we iteratively improve the language model and constraints until we achieve the convergent language model and action models. We empirically exhibit that our approach is both effective and efficient.
翻译:虽然有一些方法能够从计划痕迹中学习行动模式,但是没有从文本观测中学习行动模式的工作,而文本观测与计划痕迹相比,是普遍和容易得多的,从现实世界应用中收集的行动模式,我们在本文件中提出一种新的方法,通过结合约束性满意度和自然语言处理技术,从自然语言文本中学习行动模式。具体地说,我们首先建立一个新语言模式,从文本中提取记录,然后建立一套制约因素,以便根据所提取的计划痕迹产生行动模式。此后,我们反复改进语言模式和制约因素,直到我们达到趋同的语言模型和行动模式。我们从经验上证明,我们的方法既有效又高效。