In recent years, heuristic search methods for classical planning have achieved remarkable results. Their most successful representative, the FF algorithm, performs well over a wide spectrum of planning domains and still sets the state of the art for STRIPS planning. However, there are some planning domains in which algorithms like FF and HSP perform poorly because their relaxation method of ignoring the “delete lists” of STRIPS operators loses too much vital information. Planning domains which have many dead ends in the search space are especially problematic in this regard. In some domains, dead ends are readily found by the human observer yet remain undetected by all propositional planning systems we are aware of. We believe that this is ...
State spaces in classical planning domains are usually quite large and can easily be extended to lar...
Causal graphs are widely used in planning to capture the internal structure of planning instances. ...
Recent domain-determinization techniques have been very successful in many probabilistic planning pr...
In recent years, heuristic search methods for classical planning have achieved remarkable results. T...
In recent years, heuristic search methods for classical plan-ning have achieved remarkable results. ...
Many current heuristics for domain-independent planning, such as Bonet and Geffner’s additive heuris...
Current state-of-the-art planners solve problems, easy and hard alike, by search, expanding hundreds...
Recent advances in classical planning have used the SAS+ formalism, and several effective heuristics...
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...
AbstractIn the AIPS98 Planning Contest, the hsp planner showed that heuristic search planners can be...
This doctoral work centers on developing domain-independent heuristics for planning problems charac...
Abstract. We present a technique which allows partial-order causallink (POCL) planning systems to us...
Fast Downward is a classical planning system based on heuristic search. It can deal with general det...
This thesis explores limitations of heuristic search planning, and presents techniques to overcome t...
State spaces in classical planning domains are usually quite large and can easily be extended to lar...
Causal graphs are widely used in planning to capture the internal structure of planning instances. ...
Recent domain-determinization techniques have been very successful in many probabilistic planning pr...
In recent years, heuristic search methods for classical planning have achieved remarkable results. T...
In recent years, heuristic search methods for classical plan-ning have achieved remarkable results. ...
Many current heuristics for domain-independent planning, such as Bonet and Geffner’s additive heuris...
Current state-of-the-art planners solve problems, easy and hard alike, by search, expanding hundreds...
Recent advances in classical planning have used the SAS+ formalism, and several effective heuristics...
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...
AbstractIn the AIPS98 Planning Contest, the hsp planner showed that heuristic search planners can be...
This doctoral work centers on developing domain-independent heuristics for planning problems charac...
Abstract. We present a technique which allows partial-order causallink (POCL) planning systems to us...
Fast Downward is a classical planning system based on heuristic search. It can deal with general det...
This thesis explores limitations of heuristic search planning, and presents techniques to overcome t...
State spaces in classical planning domains are usually quite large and can easily be extended to lar...
Causal graphs are widely used in planning to capture the internal structure of planning instances. ...
Recent domain-determinization techniques have been very successful in many probabilistic planning pr...