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首页> 外文期刊>The Journal of Artificial Intelligence Research >Subgoaling Techniques for Satisficing and Optimal Numeric Planning
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Subgoaling Techniques for Satisficing and Optimal Numeric Planning

机译:用于令人满意和最佳数字规划的亚峰级技术

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This paper studies novel subgoaling relaxations for automated planning with propositional and numeric state variables. Subgoaling relaxations address one source of complexity of the planning problem: the requirement to satisfy conditions simultaneously. The core idea is to relax this requirement by recursively decomposing conditions into atomic subgoals that are considered in isolation. Such relaxations are typically used for pruning, or as the basis for computing admissible or inadmissible heuristic estimates to guide optimal or satisificing heuristic search planners. In the last decade or so, the subgoaling principle has underpinned the design of an abundance of relaxation-based heuristics whose formulations have greatly extended the reach of classical planning. This paper extends subgoaling relaxations to support numeric state variables and numeric conditions. We provide both theoretical and practical results, with the aim of reaching a good trade-off between accuracy and computation costs within a heuristic state-space search planner. Our experimental results validate the theoretical assumptions, and indicate that subgoaling substantially improves on the state of the art in optimal and satisficing numeric planning via forward state-space search.
机译:本文研究了具有命题和数值状态变量的自动规划的新型亚老型弛豫。亚老金放松解决了规划问题的一个复杂性:要求同时满足条件。核心思想是通过将条件递归分解成被隔离所考虑的原子亚地块来放松此要求。这种放松通常用于修剪,或者作为计算可接受或不道实的启发式估计的基础,以指导最佳或满意的启发式搜索计划。在过去的十年左右,亚老金原则已经支持了大量放松的启发式的设计,其配方大大延长了古典规划的范围。本文扩展了亚峰级放松,以支持数值状态变量和数字条件。我们提供理论和实用的结果,目的是在启发式状态空间搜索计划员中达到准确性和计算成本之间的良好权衡。我们的实验结果验证了理论假设,并表明,通过前向状态空间搜索的最佳和满足数字规划,亚峰级大大提高了现有技术。

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