National audienceEfficient search of (quasi-)optimal paths in graphs remains a fundamental task in Artificial Intelligence. Recent works [7, 4, 5, 8] have contributed to a new point of view on this problem whereby heuristics are learned from past solving experiences rather than derived through a static abstraction of the description of the problem. In this paper, we show how to improve this work by better exploiting information from past solving episodes. The experiments reported here confirm the significant reduction in search space achieved by our algorithm. In a second part, we show how to generalize these learning techniques to the case of changing goal states. Extensive experiments and their analysis show that the variations of the goa...
Path finding algorithms are part of artificial intelligence. First algorithms were presented in the ...
We consider an abstract representation of some environment in which an agent is located. Given a goa...
In the field of heuristic search it is usually assumed that admissible heuristics are consistent, im...
National audienceEfficient search of (quasi-)optimal paths in graphs remains a fundamental task in A...
La recherche efficace d'un chemin (quasi) optimal dans un graphe reste une tâche fondamentale en Inte...
© 2014, The Author(s). Situated agents frequently need to solve search problems in partially known t...
AbstractIn the context of the research study reported here, “learning” refers to identification of o...
Adaptive A* is an incremental version of A* that updates the h-values of the previous A* search to m...
Adaptive A * is an incremental version of A * that up-dates the h-values of the previous A * search ...
In this thesis we investigate methods by which GT4, a revised and extended version of the Doran-Mic...
Consider a problem of finding a path from a start to a goal node on a graph. Suppose that we have di...
Heuristic search methods have been applied to a wide variety of optimisation problems. A central ele...
The last couple of decades have seen a surge of interest and sophistication in using heuristics to s...
Path planning algorithms can solve the problem of finding paths through continuous spaces. This prob...
The last couple of decades have seen a surge of interest and sophistication in using heuristics to s...
Path finding algorithms are part of artificial intelligence. First algorithms were presented in the ...
We consider an abstract representation of some environment in which an agent is located. Given a goa...
In the field of heuristic search it is usually assumed that admissible heuristics are consistent, im...
National audienceEfficient search of (quasi-)optimal paths in graphs remains a fundamental task in A...
La recherche efficace d'un chemin (quasi) optimal dans un graphe reste une tâche fondamentale en Inte...
© 2014, The Author(s). Situated agents frequently need to solve search problems in partially known t...
AbstractIn the context of the research study reported here, “learning” refers to identification of o...
Adaptive A* is an incremental version of A* that updates the h-values of the previous A* search to m...
Adaptive A * is an incremental version of A * that up-dates the h-values of the previous A * search ...
In this thesis we investigate methods by which GT4, a revised and extended version of the Doran-Mic...
Consider a problem of finding a path from a start to a goal node on a graph. Suppose that we have di...
Heuristic search methods have been applied to a wide variety of optimisation problems. A central ele...
The last couple of decades have seen a surge of interest and sophistication in using heuristics to s...
Path planning algorithms can solve the problem of finding paths through continuous spaces. This prob...
The last couple of decades have seen a surge of interest and sophistication in using heuristics to s...
Path finding algorithms are part of artificial intelligence. First algorithms were presented in the ...
We consider an abstract representation of some environment in which an agent is located. Given a goa...
In the field of heuristic search it is usually assumed that admissible heuristics are consistent, im...