Tool for automatically acquiring control knowledge for planning
نویسندگان
چکیده
Current planners show impressive performance in many real world and artificial domains by using planning (either domain dependent or independent) heuristics. But, on one hand, domain dependent planners still outperform domain independent planners by re-defining domain theories, also including control knowledge. On the other hand, these domain dependent planners require a careful and manual refinement of domain theories to incorporate domain and control knowledge. Here, we present a tool that automatically generates domain and control knowledge as a middle ground solution to the definition of efficient quality-based planners.
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