We illustrate the importance of branching in planning by exploring alternative branching schemes in Graphplan. As argued elsewhere, Graphplan can be understood as a heuristic search planner that performs an IDA* regression search with a heuristic function encoded in the plan graph. Here, we study two alternatives to Graphplan where the IDA* search algorithm and the heuristic encoded in the plan graph are maintained but the branching scheme is changed: rather than constructing plans from the tail, commitments are allowed anywhere in the plan. These commitments force certain actions in or out of certain time steps. While the regression search allows Graphplan to build the plan graph only once, in the new branching scheme the plan...
Most of the key computational ideas in planning have been developed for simple planning languages wh...
AbstractA key feature of modern optimal planners such as graphplan and blackbox is their ability to ...
Despite their near dominance, heuristic state search planners still lag behind disjunctive planners ...
The Graphplan algorithm for generating optimal make-span plans containing parallel sets of actions r...
The Graphplan algorithm for generating optimal make-span plans containing parallel sets of actions r...
We introduce a new approach to planning in STRIPS-like domains based on constructing and analyzing a...
We introduce a new approach to planning in STRIPS-like domains based on con-structing and analyzing ...
AbstractWe introduce a new approach to planning in STRIPS-like domains based on constructing and ana...
Planning has been an area of research in artificial intelligence for over four decades. It increases...
Planning has been an area of research in artificial intelligence for over four decades. It increases...
AbstractWe introduce a new approach to planning in STRIPS-like domains based on constructing and ana...
Branching and lower bounds are two key notions in heuristic search and combinatorial optimization. B...
Graphplan and heuristic state space planners such as HSP-R and UNPOP are currently two of the most e...
AbstractPlanners of the Graphplan family (Graphplan, IPP, STAN,…) are currently considered to be the...
This thesis deals with planning problems and Boolean satisfiability problems that represent major ch...
Most of the key computational ideas in planning have been developed for simple planning languages wh...
AbstractA key feature of modern optimal planners such as graphplan and blackbox is their ability to ...
Despite their near dominance, heuristic state search planners still lag behind disjunctive planners ...
The Graphplan algorithm for generating optimal make-span plans containing parallel sets of actions r...
The Graphplan algorithm for generating optimal make-span plans containing parallel sets of actions r...
We introduce a new approach to planning in STRIPS-like domains based on constructing and analyzing a...
We introduce a new approach to planning in STRIPS-like domains based on con-structing and analyzing ...
AbstractWe introduce a new approach to planning in STRIPS-like domains based on constructing and ana...
Planning has been an area of research in artificial intelligence for over four decades. It increases...
Planning has been an area of research in artificial intelligence for over four decades. It increases...
AbstractWe introduce a new approach to planning in STRIPS-like domains based on constructing and ana...
Branching and lower bounds are two key notions in heuristic search and combinatorial optimization. B...
Graphplan and heuristic state space planners such as HSP-R and UNPOP are currently two of the most e...
AbstractPlanners of the Graphplan family (Graphplan, IPP, STAN,…) are currently considered to be the...
This thesis deals with planning problems and Boolean satisfiability problems that represent major ch...
Most of the key computational ideas in planning have been developed for simple planning languages wh...
AbstractA key feature of modern optimal planners such as graphplan and blackbox is their ability to ...
Despite their near dominance, heuristic state search planners still lag behind disjunctive planners ...