Several recent heuristics for domain independent planning adopt some action cost partitioning scheme to derive admissible heuristic estimates. Given a state, two methods for obtaining an action cost partitioning have been proposed: optimal cost partitioning, which results in the best possible heuristic estimate for that state, but requires a substantial computational effort, and ad-hoc (uniform) cost partitioning, which is much faster, but is usually less informative. These two methods represent almost opposite points in the tradeoff between heuristic accuracy and heuristic computation time. One compromise that has been proposed between these two is using an optimal cost partitioning for the initial state to evaluate all states. In this pap...
The automatic derivation of heuristic functions for guiding the search for plans in large spaces is ...
This paper proposes and investigates a novel way of combining machine learning and heuristic search ...
Information about action costs is critical for real-world AI planning applications. Rather than rely...
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...
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...
Many heuristics for cost-optimal planning are based on linear programming. We cover several interest...
Cost partitioning is a well-known technique to make admissible heuristics for classical planning add...
This paper proposes a domain independent heuristic for state space planning, which is based on actio...
Cost partitioning is a method for admissibly adding multiple heuristics for state-space search. Satu...
It is well known that there cannot be a single "best" heuristic for optimal planning in general. One...
Cost partitioning is a general method for admissibly summing up heuristic estimates for optimal stat...
Extending the classical planning formalism with state-dependent action costs (SDAC) allows an up to ...
Operator cost partitioning is a well-known technique to make admissible heuristics additive by distr...
The automatic derivation of heuristic functions for guiding the search for plans in large spaces is ...
This paper proposes and investigates a novel way of combining machine learning and heuristic search ...
Information about action costs is critical for real-world AI planning applications. Rather than rely...
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...
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...
Many heuristics for cost-optimal planning are based on linear programming. We cover several interest...
Cost partitioning is a well-known technique to make admissible heuristics for classical planning add...
This paper proposes a domain independent heuristic for state space planning, which is based on actio...
Cost partitioning is a method for admissibly adding multiple heuristics for state-space search. Satu...
It is well known that there cannot be a single "best" heuristic for optimal planning in general. One...
Cost partitioning is a general method for admissibly summing up heuristic estimates for optimal stat...
Extending the classical planning formalism with state-dependent action costs (SDAC) allows an up to ...
Operator cost partitioning is a well-known technique to make admissible heuristics additive by distr...
The automatic derivation of heuristic functions for guiding the search for plans in large spaces is ...
This paper proposes and investigates a novel way of combining machine learning and heuristic search ...
Information about action costs is critical for real-world AI planning applications. Rather than rely...