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Abstractions for Planning with State-Dependent Action Costs

机译:规划具有国家依赖行动成本的抽象

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Extending the classical planning formalism with state-dependent action costs (SDAC) allows an up to exponentially more compact task encoding. Recent work proposed to use edge-valued multi-valued decision diagrams (EVMDDs) to represent cost functions, which allows to automatically detect and exhibit structure in cost functions and to make heuristic estimators accurately reflect SDAC. However, so far only the inadmissible additive heuristic h~(add) has been considered in this context. In this paper, we define informative admissible abstraction heuristics which enable optimal planning with SDAC. We discuss how abstract cost values can be extracted from EVMDDs that represent concrete cost functions without adjusting them to the selected abstraction. Our theoretical analysis shows that this is efficiently possible for abstractions that are Cartesian or coarser. We adapt the counterexample-guided abstraction refinement approach to derive such abstractions. An empirical evaluation of the resulting heuristic shows that highly accurate values can be computed quickly.
机译:扩展具有国家依赖的行动成本(SDAC)的经典规划形式主义允许提升到指数更紧凑的任务编码。最近的工作建议使用边缘值多价决策图(EVMDDS)来表示成本函数,这允许在成本函数中自动检测和展示结构,并使启发式估计器准确反映SDAC。然而,到目前为止,在这种情况下只考虑了不允许的添加剂启发式H〜(添加)。在本文中,我们定义了具有SDAC的最佳规划的信息允许的抽象启发式。我们讨论如何从EVMDD中提取摘要成本值,该EVMDD表示具体成本函数的功能,而无需将它们调整到所选抽象。我们的理论分析表明,这对于笛卡尔或粗糙的抽象是有效的。我们调整强调引导的抽象改进方法来导出此类抽象。对所得启发式的经验评估表明,可以快速计算高精度值。

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