We investigate the role of learning in search-based systems for solving optimization problems. We use a learning model, where the values of a set of features can be used to induce a clustering of the problem state space. The feasible set of h values corresponding to each cluster is called hset. If we relax the optimality guarantee, and tolerate a risk factor, the distribution of hset can be used to expedite search and produce results within a given risk of suboptimality. The off-line learning method consists of solving a batch of problems by using A to learn the distribution of the hset in the learning phase. This distribution can be used to solve the rest of the problems effectively. We show how the knowledge acquisition phase can be integ...
The paper describes a novel method for empirical algorithm design called database learning, and pres...
Abstract. Problem solvers have at their disposal many heuristics that may support effective search. ...
We consider the fundamental problem of prediction with expert advice where the experts are "optimiza...
We provide an overall framework for learning in search based systems that are used to find optimum s...
Suboptimal search algorithms offer shorter solving times by sacrificing guaranteed solution optimali...
A method is presented that causes A * to return high quality solutions while solving a set of proble...
Effective solving of constraint problems often requires choosing good or specific search heuristics....
International audienceThis work presents the concept of Continuous Search (CS), which objective is t...
AbstractReal-time search provides an attractive framework for intelligent autonomous agents, as it a...
In reinforcement learning it is frequently necessary to resort to an approximation to the true optim...
Jabbari Arfaee, Zilles, and Holte presented the bootstrap learning system, a system that learns stro...
Suboptimal search algorithms offer shorter solving times by sacrificing guaranteed solution optimali...
Hyper-heuristics are search algorithms which operate on a set of heuristics with the goal of solving...
AbstractWe investigate the use of machine learning to create effective heuristics for search algorit...
In this paper, we describe methods for efficiently com-puting better solutions to control problems i...
The paper describes a novel method for empirical algorithm design called database learning, and pres...
Abstract. Problem solvers have at their disposal many heuristics that may support effective search. ...
We consider the fundamental problem of prediction with expert advice where the experts are "optimiza...
We provide an overall framework for learning in search based systems that are used to find optimum s...
Suboptimal search algorithms offer shorter solving times by sacrificing guaranteed solution optimali...
A method is presented that causes A * to return high quality solutions while solving a set of proble...
Effective solving of constraint problems often requires choosing good or specific search heuristics....
International audienceThis work presents the concept of Continuous Search (CS), which objective is t...
AbstractReal-time search provides an attractive framework for intelligent autonomous agents, as it a...
In reinforcement learning it is frequently necessary to resort to an approximation to the true optim...
Jabbari Arfaee, Zilles, and Holte presented the bootstrap learning system, a system that learns stro...
Suboptimal search algorithms offer shorter solving times by sacrificing guaranteed solution optimali...
Hyper-heuristics are search algorithms which operate on a set of heuristics with the goal of solving...
AbstractWe investigate the use of machine learning to create effective heuristics for search algorit...
In this paper, we describe methods for efficiently com-puting better solutions to control problems i...
The paper describes a novel method for empirical algorithm design called database learning, and pres...
Abstract. Problem solvers have at their disposal many heuristics that may support effective search. ...
We consider the fundamental problem of prediction with expert advice where the experts are "optimiza...