Jabbari Arfaee, Zilles, and Holte presented the bootstrap learning system, a system that learns strong heuristic functions for state-space problems. They showed that IDA* with a bootstrap heuristic is able to quickly find near-optimal solutions in several problem domains. However, the process the bootstrap method uses to learn heuristic functions is time-consuming: it is on the order of days. In this paper we present a learning system that uses an approximation method instead of an exact one to generate the training set required to learn heuristics. We showed recently that solution costs can often be quickly and accurately predicted without having to actually find a solution. In this paper we apply this idea to speedup the process of learni...
Optimal planning and heuristic search systems solve state-space searchproblems by finding a least-co...
Suboptimal search algorithms offer shorter solving times by sacrificing guaranteed solution optimali...
It is well known that there cannot be a single "best" heuristic for optimal planning in general. One...
AbstractWe investigate the use of machine learning to create effective heuristics for search algorit...
search algorithms such as IDA* or heuristic-search planners. Our method aims to generate a strong he...
A method is presented that causes A * to return high quality solutions while solving a set of proble...
Classical heuristic search algorithms find the solution cost of a problem while finding the path fro...
This paper proposes and investigates a novel way of combining machine learning and heuristic search ...
Optimal planning and heuristic search systems solve state-space search problems by finding a least-c...
Heuristic search algorithms are designed to return an optimal path from a start state to a goal stat...
We investigate the role of learning in search-based systems for solving optimization problems. We us...
We provide an overall framework for learning in search based systems that are used to find optimum s...
Building effective optimization heuristics is a challenging task which often takes developers severa...
This article shows how rational analysis can be used to minimize learning cost for a general class o...
Real-time agent-centric algorithms have been used for learning and solving problems since the in-tro...
Optimal planning and heuristic search systems solve state-space searchproblems by finding a least-co...
Suboptimal search algorithms offer shorter solving times by sacrificing guaranteed solution optimali...
It is well known that there cannot be a single "best" heuristic for optimal planning in general. One...
AbstractWe investigate the use of machine learning to create effective heuristics for search algorit...
search algorithms such as IDA* or heuristic-search planners. Our method aims to generate a strong he...
A method is presented that causes A * to return high quality solutions while solving a set of proble...
Classical heuristic search algorithms find the solution cost of a problem while finding the path fro...
This paper proposes and investigates a novel way of combining machine learning and heuristic search ...
Optimal planning and heuristic search systems solve state-space search problems by finding a least-c...
Heuristic search algorithms are designed to return an optimal path from a start state to a goal stat...
We investigate the role of learning in search-based systems for solving optimization problems. We us...
We provide an overall framework for learning in search based systems that are used to find optimum s...
Building effective optimization heuristics is a challenging task which often takes developers severa...
This article shows how rational analysis can be used to minimize learning cost for a general class o...
Real-time agent-centric algorithms have been used for learning and solving problems since the in-tro...
Optimal planning and heuristic search systems solve state-space searchproblems by finding a least-co...
Suboptimal search algorithms offer shorter solving times by sacrificing guaranteed solution optimali...
It is well known that there cannot be a single "best" heuristic for optimal planning in general. One...