Potential heuristics are weighted functions over state features of a planning task. A recent study defines the complexity of a task as the minimum required feature complexity for a potential heuristic that makes a search backtrack-free. This gives an indication of how complex potential heuristics need to be to achieve good results in satisficing planning. However, these results do not directly transfer to optimal planning. In this paper, we empirically study how complex potential heuristics must be to represent the perfect heuristic and how close to perfect heuristics can get with a limited number of features. We aim to identify the practical trade-offs between size, complexity and time for the quality of potential heuristics. Our results s...
The performance of heuristic search based planners depends heavily on the quality of the heuristic f...
The introduction of the concept of state novelty has advanced the state of the art in deterministic ...
We focus on relatively low dimensional robot motion planning problems, such as planning for navigati...
Potential heuristics are weighted functions over state features of a planning task. A recent study d...
Potential heuristics, recently introduced by Pommerening et al., characterize admissible and consist...
We analyze how complex a heuristic function must be to directly guide a state-space search algorithm...
Potential heuristics for state-space search are defined as weighted sums over simple state features....
State spaces in classical planning domains are usually quite large and can easily be extended to lar...
Optimal heuristic searches such as A * search are widely used for planning but can rarely scale to l...
Optimal heuristic searches such as A* search are widely used for planning but can rarely scale to la...
Generalized planning aims at computing solutions that work for all instances of the same domain. In ...
Cost-optimal planning is a very well-studied topic within planning, and it has proven to be computat...
prodigy's planning algorithm uses domain-independent search heuristics. In this paper, we suppo...
This thesis explores limitations of heuristic search planning, and presents techniques to overcome t...
Heuristic functions play an important role in drastically improving performance of satisficing plann...
The performance of heuristic search based planners depends heavily on the quality of the heuristic f...
The introduction of the concept of state novelty has advanced the state of the art in deterministic ...
We focus on relatively low dimensional robot motion planning problems, such as planning for navigati...
Potential heuristics are weighted functions over state features of a planning task. A recent study d...
Potential heuristics, recently introduced by Pommerening et al., characterize admissible and consist...
We analyze how complex a heuristic function must be to directly guide a state-space search algorithm...
Potential heuristics for state-space search are defined as weighted sums over simple state features....
State spaces in classical planning domains are usually quite large and can easily be extended to lar...
Optimal heuristic searches such as A * search are widely used for planning but can rarely scale to l...
Optimal heuristic searches such as A* search are widely used for planning but can rarely scale to la...
Generalized planning aims at computing solutions that work for all instances of the same domain. In ...
Cost-optimal planning is a very well-studied topic within planning, and it has proven to be computat...
prodigy's planning algorithm uses domain-independent search heuristics. In this paper, we suppo...
This thesis explores limitations of heuristic search planning, and presents techniques to overcome t...
Heuristic functions play an important role in drastically improving performance of satisficing plann...
The performance of heuristic search based planners depends heavily on the quality of the heuristic f...
The introduction of the concept of state novelty has advanced the state of the art in deterministic ...
We focus on relatively low dimensional robot motion planning problems, such as planning for navigati...