Learning Macro-actions for State-Space Planning

7 Oct 2016  ·  Sandra Castellanos-Paez, Damien Pellier, Humbert Fiorino, Sylvie Pesty ·

Planning has achieved significant progress in recent years. Among the various approaches to scale up plan synthesis, the use of macro-actions has been widely explored. As a first stage towards the development of a solution to learn on-line macro-actions, we propose an algorithm to identify useful macro-actions based on data mining techniques. The integration in the planning search of these learned macro-actions shows significant improvements over four classical planning benchmarks.

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