Heuristic search with an admissible heuristic is one of the most prominent approaches to solving classical planning tasks optimally. In the first part of this thesis, we introduce a new family of admissible heuristics for classical planning, based on Cartesian abstractions, which we derive by counterexample-guided abstraction refinement. Since one abstraction usually is not informative enough for challenging planning tasks, we present several ways of creating diverse abstractions. To combine them admissibly, we introduce a new cost partitioning algorithm, which we call saturated cost partitioning. It considers the heuristics sequentially and uses the minimum amount of costs that preserves all heuristic estimates for the current heuristic be...
Optimal cost partitioning can produce high quality heuristic estimates even from small abstractions....
Pattern databases are the foundation of some of the strongest admissible heuristics for optimal clas...
Many recent planning heuristics are based on LP optimization. However, planning experts mostly use L...
In classical planning, cost partitioning is a method for admissibly combining a set of heuristic est...
Cost partitioning is a method for admissibly adding multiple heuristics for state-space search. Satu...
Cost partitioning is a method for admissibly combining a set of admissible heuristic estimators by d...
Saturated cost partitioning and post-hoc optimization are two powerful cost partitioning algorithms ...
Cost partitioning is a general method for admissibly summing up heuristic estimates for optimal stat...
Cost partitioning is a general and principled approach for constructing additive admissible heuristi...
Abstraction heuristics are a popular method to guide optimal search algorithms in classical planning...
We have recently shown how counterexample-guided abstraction refinement can be used to derive inform...
Admissible heuristics are the main ingredient when solving classical planning tasks optimally with h...
Counterexample-guided abstraction refinement (CEGAR) is a method for incrementally computing abstrac...
We have recently shown how counterexample-guided abstraction refinement can be used to derive inform...
Cost partitioning admissibly combines the information from multiple heuristics for optimal state-spa...
Optimal cost partitioning can produce high quality heuristic estimates even from small abstractions....
Pattern databases are the foundation of some of the strongest admissible heuristics for optimal clas...
Many recent planning heuristics are based on LP optimization. However, planning experts mostly use L...
In classical planning, cost partitioning is a method for admissibly combining a set of heuristic est...
Cost partitioning is a method for admissibly adding multiple heuristics for state-space search. Satu...
Cost partitioning is a method for admissibly combining a set of admissible heuristic estimators by d...
Saturated cost partitioning and post-hoc optimization are two powerful cost partitioning algorithms ...
Cost partitioning is a general method for admissibly summing up heuristic estimates for optimal stat...
Cost partitioning is a general and principled approach for constructing additive admissible heuristi...
Abstraction heuristics are a popular method to guide optimal search algorithms in classical planning...
We have recently shown how counterexample-guided abstraction refinement can be used to derive inform...
Admissible heuristics are the main ingredient when solving classical planning tasks optimally with h...
Counterexample-guided abstraction refinement (CEGAR) is a method for incrementally computing abstrac...
We have recently shown how counterexample-guided abstraction refinement can be used to derive inform...
Cost partitioning admissibly combines the information from multiple heuristics for optimal state-spa...
Optimal cost partitioning can produce high quality heuristic estimates even from small abstractions....
Pattern databases are the foundation of some of the strongest admissible heuristics for optimal clas...
Many recent planning heuristics are based on LP optimization. However, planning experts mostly use L...