Unifying the Causal Graph and Additive Heuristics

نویسندگان

  • Malte Helmert
  • Hector Geffner
چکیده

Many current heuristics for domain-independent planning, such as Bonet and Geffner’s additive heuristic and Hoffmann and Nebel’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 de-

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تاریخ انتشار 2008