Symbolic search allows saving large amounts of memory compared to regular explicit-state search algorithms. This is crucial in optimal settings, in which common search algorithms often exhaust the available memory. So far, the most successful uses of symbolic search have been bidirectional blind search and the generation of abstraction heuristics like Pattern Databases. Despite its usefulness, several common techniques in explicit-state search have not been employed in symbolic search. In particular, mutexes and other constraining invariants, techniques that have been proven essential when doing regression, are yet to be exploited in conjunction with BDDs. In this paper we analyze the use of such constraints in symbolic search and its combi...
Heuristic search is a successful approach to cost-optimal planning. Bidirectional heuristic search a...
Symbolic search with binary decision diagrams (BDDs) often saves huge amounts of memory and computat...
This work combines recent advances in AI planning under memory limitation, namely bitvector and symb...
Symbolic search with BDDs has shown remarkable performance for cost-optimal deterministic planning b...
Symbolic search, using Binary Decision Diagrams (BDDs) to represent sets of states, is a competitive...
In this paper we propose refinements for optimal search with symbolic pattern databases in determini...
A promising approach to solving large state-space search problems is to integrate heuristic search w...
A promising approach to solving large state-space search problems is to integrate heuristic search w...
A Reduced Ordered Binary Decision Diagram (BDD) is a symbolic data structure introduced to the model...
Symbolic search using BDDs usually saves huge amounts of memory, while in some domains its savings a...
Search is an important topic in many areas of AI. Search problems often result in an immense number ...
In this paper we study traditional and enhanced BDD-based exploration procedures capable of handling...
The idea of using BDDs for optimal sequential planning is to reduce the memory requirements for the ...
In this article, we present a framework called state-set branching that combines symbolic search bas...
The objective of optimal oversubscription planning is to find a plan that yields an end state with a...
Heuristic search is a successful approach to cost-optimal planning. Bidirectional heuristic search a...
Symbolic search with binary decision diagrams (BDDs) often saves huge amounts of memory and computat...
This work combines recent advances in AI planning under memory limitation, namely bitvector and symb...
Symbolic search with BDDs has shown remarkable performance for cost-optimal deterministic planning b...
Symbolic search, using Binary Decision Diagrams (BDDs) to represent sets of states, is a competitive...
In this paper we propose refinements for optimal search with symbolic pattern databases in determini...
A promising approach to solving large state-space search problems is to integrate heuristic search w...
A promising approach to solving large state-space search problems is to integrate heuristic search w...
A Reduced Ordered Binary Decision Diagram (BDD) is a symbolic data structure introduced to the model...
Symbolic search using BDDs usually saves huge amounts of memory, while in some domains its savings a...
Search is an important topic in many areas of AI. Search problems often result in an immense number ...
In this paper we study traditional and enhanced BDD-based exploration procedures capable of handling...
The idea of using BDDs for optimal sequential planning is to reduce the memory requirements for the ...
In this article, we present a framework called state-set branching that combines symbolic search bas...
The objective of optimal oversubscription planning is to find a plan that yields an end state with a...
Heuristic search is a successful approach to cost-optimal planning. Bidirectional heuristic search a...
Symbolic search with binary decision diagrams (BDDs) often saves huge amounts of memory and computat...
This work combines recent advances in AI planning under memory limitation, namely bitvector and symb...