Planning as heuristic search is one of the most successful approaches to classical planning but unfortunately, it does not extend trivially to Generalized Planning (GP). GP aims to compute algorithmic solutions that are valid for a set of classical planning instances from a given domain, even if these instances differ in the number of objects, the number of state variables, their domain size, or their initial and goal configuration. The generalization requirements of GP make it impractical to perform the state-space search that is usually implemented by heuristic planners. This paper adapts the planning as heuristic search paradigm to the generalization requirements of GP, and presents the first native heuristic search approach to GP. First...
Planning is one of the fundamental problems of artificial intelligence. A classic planning problem ...
Research in the field of Automated Planning is largely focused on the problem of constructing plans ...
Declarative problem solving, such as planning, poses interesting challenges for Genetic Programming ...
Landmarks are one of the most effective search heuristics for classical planning, but largely ignore...
Landmarks are one of the most effective search heuristics for classical planning, but largely ignore...
Generalized planning aims at computing solutions that work for all instances of the same domain. In ...
AbstractIn the AIPS98 Planning Contest, the hsp planner showed that heuristic search planners can be...
This thesis explores limitations of heuristic search planning, and presents techniques to overcome t...
Despite the long history of classical planning, there has been very little comparative analysis of t...
We consider the problem of finding generalized plans for situations where the number of objects may ...
State spaces in classical planning domains are usually quite large and can easily be extended to lar...
We consider the problem of finding generalized plans for sit-uations where the number of objects may...
AbstractIn the AIPS98 Planning Contest, the hsp planner showed that heuristic search planners can be...
In the AIPS98 Planning Contest, the hsp planner showed that heuristic search planners can be competi...
In the AIPS98 Planning Contest, the hsp planner showed that heuristic search planners can be competi...
Planning is one of the fundamental problems of artificial intelligence. A classic planning problem ...
Research in the field of Automated Planning is largely focused on the problem of constructing plans ...
Declarative problem solving, such as planning, poses interesting challenges for Genetic Programming ...
Landmarks are one of the most effective search heuristics for classical planning, but largely ignore...
Landmarks are one of the most effective search heuristics for classical planning, but largely ignore...
Generalized planning aims at computing solutions that work for all instances of the same domain. In ...
AbstractIn the AIPS98 Planning Contest, the hsp planner showed that heuristic search planners can be...
This thesis explores limitations of heuristic search planning, and presents techniques to overcome t...
Despite the long history of classical planning, there has been very little comparative analysis of t...
We consider the problem of finding generalized plans for situations where the number of objects may ...
State spaces in classical planning domains are usually quite large and can easily be extended to lar...
We consider the problem of finding generalized plans for sit-uations where the number of objects may...
AbstractIn the AIPS98 Planning Contest, the hsp planner showed that heuristic search planners can be...
In the AIPS98 Planning Contest, the hsp planner showed that heuristic search planners can be competi...
In the AIPS98 Planning Contest, the hsp planner showed that heuristic search planners can be competi...
Planning is one of the fundamental problems of artificial intelligence. A classic planning problem ...
Research in the field of Automated Planning is largely focused on the problem of constructing plans ...
Declarative problem solving, such as planning, poses interesting challenges for Genetic Programming ...