Heuristic forward search is currently the dominant paradigm in classical planning. Forward search algorithms typically rely on a single, relatively simple variation of best-first search and remain fixed throughout the process of solving a planning problem. Existing work combining multiple search techniques usually aims at supporting best-first search with an additional exploratory mechanism, triggered using a handcrafted criterion. A notable exception is very recent work which combines various search techniques using a trainable policy. That approach, however, is confined to a discrete action space comprising several fixed subroutines. In this paper, we introduce a parametrized search algorithm template which combines various search techni...
AbstractIn the AIPS98 Planning Contest, the hsp planner showed that heuristic search planners can be...
We present a new approach to learning for planning, where knowledge acquired while solving a given s...
The Graphplan algorithm for generating optimal make-span plans containing parallel sets of actions r...
Heuristic forward search is currently the dominant paradigmin classical planning. Forward search alg...
A common paradigm in classical planning is heuristic forward search. Forward search planners often r...
Many current state-of-the-art planners rely on forward heuristic search. The success of such search ...
Heuristic search algorithms are widely used in both AI planning and the decoding of sequences from d...
Forward-chaining heuristic search is a well-established and popular paradigm for domain-independent ...
Direct policy search methods offer the promise of automatically learning controllers for com-plex, h...
Recently tremendous advances have been made in the performance of AI planning systems. However incre...
State space search solves navigation tasks and many other real world problems. Heuristic search, esp...
Optimal heuristic searches such as A * search are widely used for planning but can rarely scale to l...
Recent machine-learning approaches to deterministic search and domain-independent planning employ po...
Recent advances in applying deep learning to planning have shown that Deep Reactive Policies (DRPs) ...
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...
We present a new approach to learning for planning, where knowledge acquired while solving a given s...
The Graphplan algorithm for generating optimal make-span plans containing parallel sets of actions r...
Heuristic forward search is currently the dominant paradigmin classical planning. Forward search alg...
A common paradigm in classical planning is heuristic forward search. Forward search planners often r...
Many current state-of-the-art planners rely on forward heuristic search. The success of such search ...
Heuristic search algorithms are widely used in both AI planning and the decoding of sequences from d...
Forward-chaining heuristic search is a well-established and popular paradigm for domain-independent ...
Direct policy search methods offer the promise of automatically learning controllers for com-plex, h...
Recently tremendous advances have been made in the performance of AI planning systems. However incre...
State space search solves navigation tasks and many other real world problems. Heuristic search, esp...
Optimal heuristic searches such as A * search are widely used for planning but can rarely scale to l...
Recent machine-learning approaches to deterministic search and domain-independent planning employ po...
Recent advances in applying deep learning to planning have shown that Deep Reactive Policies (DRPs) ...
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...
We present a new approach to learning for planning, where knowledge acquired while solving a given s...
The Graphplan algorithm for generating optimal make-span plans containing parallel sets of actions r...