The difficulty of deterministic planning increases exponentially with search-tree depth. Black-box planning presents an even greater challenge, since planners must operate without an explicit model of the domain. Heuristics can make search more efficient, but goal-aware heuristics for black-box planning usually rely on goal counting, which is often quite uninformative. In this work, we show how to overcome this limitation by discovering macro-actions that make the goal-count heuristic more accurate. Our approach searches for macro-actions with focused effects (i.e. macros that modify only a small number of state variables), which align well with the assumptions made by the goal-count heuristic. Focused macros dramatically improve black-box planning efficiency across a wide range of planning domains, sometimes beating even state-of-the-art planners with access to a full domain model.
翻译:确定性规划的困难随着搜索树的深度而成倍增加。黑盒规划是一个更大的挑战,因为规划者必须在没有明确的领域模型的情况下运作。 黑盒规划的超常性能可以提高搜索效率,但黑盒规划的有目标意识的疲劳性通常依赖于目标计数,而这往往相当缺乏信息规范。 在这项工作中,我们展示了如何通过发现宏观行动来克服这一局限性,这些宏观行动使得目标计数的超常性能更加准确。我们的方法是寻找具有集中效果的宏观行动(即只修改少数国家变量的宏观),这些与目标计值的超常性假设非常吻合。重点宏观显著地提高了广泛规划领域的黑盒规划效率,有时甚至打破了能够进入全域模型的最先进的规划者。