For over three decades, the planning community has explored countless methods for data-driven model acquisition. These range in sophistication (e.g., simple set operations to full-blown reformulations), methodology (e.g., logic-based vs. planing-based), and assumptions (e.g., fully vs. partially observable). With no fewer than 43 publications in the space, it can be overwhelming to understand what approach could or should be applied in a new setting. We present a holistic characterization of the action model acquisition space and further introduce a unifying framework for automated action model acquisition. We have re-implemented some of the landmark approaches in the area, and our characterization of all the techniques offers deep insight into the research opportunities that remain; i.e., those settings where no technique is capable of solving.
翻译:三十多年来,规划界探索了无数的数据驱动模型获取方法,这些方法包括精密性(例如,简单组合操作到全面重整)、方法(例如,基于逻辑的方法与基于规划的方法)和假设(例如,完全与部分可观测的不少于43种出版物),在空间内,了解在新的环境中可以或应当采用何种方法是难以想象的。我们对行动模型获取空间作了全面描述,并进一步为自动行动模型获取进一步引入了统一框架。我们重新采用了该领域的一些里程碑式方法,我们对所有技术的定性都深入洞察了余下的研究机会,即没有技术能够解决的环境。