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Unifying the Causal Graph and Additive Heuristics

机译:统一因果图和加性启发式

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Many current heuristics for domain-independent planning, such as Bonet and Geffner's additive heuristic and Hoffmann and Nehel's FF heuristic, are based on delete relaxations. They estimate the goal distance of a search state by approximating the solution cost in a relaxed task where negative consequences of operator applications are ignored. Helmert's causal graph heuristic, on the other hand, approximates goal distances by solving a hierarchy of "local" planning problems that only involve a single state variable and the variables it depends on directly.rnSuperficially, the causal graph heuristic appears quite unrelated to heuristics based on delete relaxation. In this contribution, we show that the opposite is true. Using a novel, declarative formulation of the causal graph heuristic, we show that the causal graph heuristic is the additive heuristic plus context. Unlike the original heuristic, our formulation does not require the causal graph to be acyclic, and thus leads to a proper generalization of both the causal graph and additive heuristics. Empirical results show that the new heuristic is significantly better informed than both Helmert's original causal graph heuristic and the additive heuristic and outperforms them across a wide range of standard benchmarks.
机译:当前用于域独立计划的许多启发式方法,例如Bonet和Geffner的加性启发式方法以及Hoffmann和Nehel的FF启发式方法,都是基于删除松弛。他们通过在不考虑操作员应用程序负面后果的轻松任务中估算解决方案成本,从而估算搜索状态的目标距离。另一方面,Helmert的因果图试探法通过解决仅涉及单个状态变量及其直接依赖的变量的“局部”计划问题的层次结构来近似目标距离。rn从表面上看,因果图试探法似乎与基于启发式法的无关在删除放松。在这一贡献中,我们证明了事实恰恰相反。使用因果图启发式的新颖的声明式表述,我们证明了因果图启发式是加性启发式加上下文。与原始启发式算法不同,我们的公式不需要因果图是非循环的,因此可以对因果图和加法式启发式方法进行适当的概括。实证结果表明,新的启发式方法比Helmert的原始因果图启发式方法和加性启发式方法具有更好的信息,并且在各种标准基准测试中均优于新启发式方法。

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