Many heuristics for cost-optimal planning are based on linear programming. We cover several interesting heuristics of this type by a common framework that fixes the objective function of the linear program. Within the framework, constraints from different heuristics can be combined in one heuristic estimate which dominates the maximum of the component heuristics. Different heuristics of the framework can be compared on the basis of their constraints. With this new method of analysis, we show dominance of the recent LP-based state-equation heuristic over optimal cost partitioning on single-variable abstractions. We also show that the previously suggested extension of the state-equation heuristic to exploit safe variables cannot lead to an im...
Cost partitioning is a general and principled approach for constructing additive admissible heuristi...
Optimal cost partitioning of classical planning heuristics has been shown to lead to excellent heuri...
We describe a flow-based heuristic for optimal planning that exploits landmarks and merges. The heur...
Many heuristics for cost-optimal planning are based on linear programming. We cover several interest...
Many recent planning heuristics are based on LP optimization. However, planning experts mostly use L...
Admissible heuristics are the main ingredient when solving classical planning tasks optimally with h...
Operator cost partitioning is a well-known technique to make admissible heuristics additive by distr...
Cost partitioning is a well-known technique to make admissible heuristics for classical planning add...
Abstraction heuristics are a popular method to guide optimal search algorithms in classical planning...
Heuristic search with an admissible heuristic is one of the most prominent approaches to solving cla...
Abstract. One of the most successful approaches in automated planning is to use heuristic state-spac...
Optimal cost partitioning can produce high quality heuristic estimates even from small abstractions....
We describe a flow-based heuristic for optimal planning that exploits landmarks and merges. The heur...
Cost partitioning is a method for admissibly combining a set of admissible heuristic estimators by d...
In classical planning, cost partitioning is a method for admissibly combining a set of heuristic est...
Cost partitioning is a general and principled approach for constructing additive admissible heuristi...
Optimal cost partitioning of classical planning heuristics has been shown to lead to excellent heuri...
We describe a flow-based heuristic for optimal planning that exploits landmarks and merges. The heur...
Many heuristics for cost-optimal planning are based on linear programming. We cover several interest...
Many recent planning heuristics are based on LP optimization. However, planning experts mostly use L...
Admissible heuristics are the main ingredient when solving classical planning tasks optimally with h...
Operator cost partitioning is a well-known technique to make admissible heuristics additive by distr...
Cost partitioning is a well-known technique to make admissible heuristics for classical planning add...
Abstraction heuristics are a popular method to guide optimal search algorithms in classical planning...
Heuristic search with an admissible heuristic is one of the most prominent approaches to solving cla...
Abstract. One of the most successful approaches in automated planning is to use heuristic state-spac...
Optimal cost partitioning can produce high quality heuristic estimates even from small abstractions....
We describe a flow-based heuristic for optimal planning that exploits landmarks and merges. The heur...
Cost partitioning is a method for admissibly combining a set of admissible heuristic estimators by d...
In classical planning, cost partitioning is a method for admissibly combining a set of heuristic est...
Cost partitioning is a general and principled approach for constructing additive admissible heuristi...
Optimal cost partitioning of classical planning heuristics has been shown to lead to excellent heuri...
We describe a flow-based heuristic for optimal planning that exploits landmarks and merges. The heur...