Cost partitioning is a method for admissibly combining a set of admissible heuristic estimators by distributing operator costs among the heuristics. Computing an optimal cost partitioning, i.e., the operator cost distribution that maximizes the heuristic value, is often prohibitively expensive to compute. Saturated cost partitioning is an alternative that is much faster to compute and has been shown to yield high-quality heuristics. However, its greedy nature makes it highly susceptible to the order in which the heuristics are considered. We propose a greedy algorithm to generate orders and show how to use hill-climbing search to optimize a given order. Combining both techniques leads to significantly better heuristic estimates than using t...
Several recent heuristics for domain independent planning adopt some action cost partitioning scheme...
Abstraction heuristics are a popular method to guide optimal search algorithms in classical planning...
Many heuristics for cost-optimal planning are based on linear programming. We cover several interest...
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...
Cost partitioning is a method for admissibly adding multiple heuristics for state-space search. Satu...
Heuristic search with an admissible heuristic is one of the most prominent approaches to solving cla...
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 admissibly combines the information from multiple heuristics for optimal state-spa...
Pattern databases are the foundation of some of the strongest admissible heuristics for optimal clas...
Optimal cost partitioning of classical planning heuristics has been shown to lead to excellent heuri...
Operator cost partitioning is a well-known technique to make admissible heuristics additive by distr...
The zipfile contains an extended version of the Fast Downward planning system (http://fast-downward....
Several recent heuristics for domain independent planning adopt some action cost partitioning scheme...
Abstraction heuristics are a popular method to guide optimal search algorithms in classical planning...
Many heuristics for cost-optimal planning are based on linear programming. We cover several interest...
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...
Cost partitioning is a method for admissibly adding multiple heuristics for state-space search. Satu...
Heuristic search with an admissible heuristic is one of the most prominent approaches to solving cla...
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 admissibly combines the information from multiple heuristics for optimal state-spa...
Pattern databases are the foundation of some of the strongest admissible heuristics for optimal clas...
Optimal cost partitioning of classical planning heuristics has been shown to lead to excellent heuri...
Operator cost partitioning is a well-known technique to make admissible heuristics additive by distr...
The zipfile contains an extended version of the Fast Downward planning system (http://fast-downward....
Several recent heuristics for domain independent planning adopt some action cost partitioning scheme...
Abstraction heuristics are a popular method to guide optimal search algorithms in classical planning...
Many heuristics for cost-optimal planning are based on linear programming. We cover several interest...