Potential heuristics, recently introduced by Pommerening et al., characterize admissible and consistent heuristics for classical planning as a set of declarative constraints. Every feasible solution for these constraints defines an admissible heuristic, and we can obtain heuristics that optimize certain criteria such as informativeness by specifying suitable objective functions. The original paper only considered one such objective function: maximizing the heuristic value of the initial state. In this paper, we explore objectives that attempt to maximize heuristic estimates for all states (reachable and unreachable), maximize heuristic estimates for a sample of reachable states, maximize the number of detected dead ends, or minimize search ...
Automatic extraction of heuristic estimates has been ex-tremely fruitful in classical planning domai...
Considering cost-optimal heuristic search, we introduce the notion of global admissibility of a heur...
The introduction of the concept of state novelty has advanced the state of the art in deterministic ...
Potential heuristics, recently introduced by Pommerening et al., characterize admissible and consist...
State spaces in classical planning domains are usually quite large and can easily be extended to lar...
Potential heuristics are weighted functions over state features of a planning task. A recent study d...
In this paper we present greedy methods for selecting a subset of heuristic functions for guiding A*...
The automatic derivation of heuristic functions for guiding the search for plans in large spaces is ...
Heuristic search is a successful approach to cost-optimal planning. Bidirectional heuristic search a...
Recent algorithms like RTDP and LAO * combine the strength of Heuristic Search (HS) and Dynamic Prog...
The performance of heuristic search based planners depends heavily on the quality of the heuristic f...
Optimal heuristic searches such as A * search are widely used for planning but can rarely scale to l...
This thesis explores limitations of heuristic search planning, and presents techniques to overcome t...
Recently automatic extraction of heuristic estimates has been shown to be extremely fruitful when ap...
Maximizing goal probability is an important objective in probabilistic planning, yet algorithms for ...
Automatic extraction of heuristic estimates has been ex-tremely fruitful in classical planning domai...
Considering cost-optimal heuristic search, we introduce the notion of global admissibility of a heur...
The introduction of the concept of state novelty has advanced the state of the art in deterministic ...
Potential heuristics, recently introduced by Pommerening et al., characterize admissible and consist...
State spaces in classical planning domains are usually quite large and can easily be extended to lar...
Potential heuristics are weighted functions over state features of a planning task. A recent study d...
In this paper we present greedy methods for selecting a subset of heuristic functions for guiding A*...
The automatic derivation of heuristic functions for guiding the search for plans in large spaces is ...
Heuristic search is a successful approach to cost-optimal planning. Bidirectional heuristic search a...
Recent algorithms like RTDP and LAO * combine the strength of Heuristic Search (HS) and Dynamic Prog...
The performance of heuristic search based planners depends heavily on the quality of the heuristic f...
Optimal heuristic searches such as A * search are widely used for planning but can rarely scale to l...
This thesis explores limitations of heuristic search planning, and presents techniques to overcome t...
Recently automatic extraction of heuristic estimates has been shown to be extremely fruitful when ap...
Maximizing goal probability is an important objective in probabilistic planning, yet algorithms for ...
Automatic extraction of heuristic estimates has been ex-tremely fruitful in classical planning domai...
Considering cost-optimal heuristic search, we introduce the notion of global admissibility of a heur...
The introduction of the concept of state novelty has advanced the state of the art in deterministic ...