xxxvii, 233 p. : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P ISE 2013 XueAutomated heuristic selection and heuristic generation have increasingly attracted attention in solving combinatorial optimization problems emerging from both theory and practice. This thesis presents a heuristic generation algorithm, called Suboptimum-and Proportion-based On-the-fly Training (SPOT), which can enhance existing heuristics with the aid of instance-specific information. By making use of the proposed "sample-learn-generate" framework, SPOT samples small-scale subproblems, initially. Then, it collects the instance-specific information from the suboptima of the subproblems by the means of machine learning. Lastly, it generates new heuristics by mo...
Abstract: In this paper we present a population-based algo-rithm for solving permutational optimizat...
The efficacy of Hyper-Heuristics in tackling NP-hard Combinatorial Optimization problems has been w...
There exist many problem-specific heuristic frameworks for solving combinatorial optimization proble...
This thesis integrates machine learning techniques into meta-heuristics for solving combinatorial op...
The present thesis describes the use of reinforcement learning to enhance heuristic search for solvi...
International audienceThis paper aims at integrating machine learning techniques into meta-heuristic...
Construction heuristics play an important role in solving combinatorial optimization problems. These...
In theoretical computer science, combinatorial optimization problems are about finding an optimal it...
Teaching-learning based optimization (TLBO) algorithm has been recently proposed in the literature a...
This paper presents a multi-objective greedy randomized adaptive search procedure (GRASP)-based heur...
In the last few years, the society is witnessing ever-growing levels of complexity in the optimizati...
Solving large combinatorial optimization problems is a ubiquitous task across multiple disciplines. ...
This paper reviews the existing literature on the combination of metaheuristics with machine learnin...
This paper presents an approach that uses reinforcement learning (RL) algorithms to solve combinator...
Combinatorial optimization problems are found in many application fields such as computer science, e...
Abstract: In this paper we present a population-based algo-rithm for solving permutational optimizat...
The efficacy of Hyper-Heuristics in tackling NP-hard Combinatorial Optimization problems has been w...
There exist many problem-specific heuristic frameworks for solving combinatorial optimization proble...
This thesis integrates machine learning techniques into meta-heuristics for solving combinatorial op...
The present thesis describes the use of reinforcement learning to enhance heuristic search for solvi...
International audienceThis paper aims at integrating machine learning techniques into meta-heuristic...
Construction heuristics play an important role in solving combinatorial optimization problems. These...
In theoretical computer science, combinatorial optimization problems are about finding an optimal it...
Teaching-learning based optimization (TLBO) algorithm has been recently proposed in the literature a...
This paper presents a multi-objective greedy randomized adaptive search procedure (GRASP)-based heur...
In the last few years, the society is witnessing ever-growing levels of complexity in the optimizati...
Solving large combinatorial optimization problems is a ubiquitous task across multiple disciplines. ...
This paper reviews the existing literature on the combination of metaheuristics with machine learnin...
This paper presents an approach that uses reinforcement learning (RL) algorithms to solve combinator...
Combinatorial optimization problems are found in many application fields such as computer science, e...
Abstract: In this paper we present a population-based algo-rithm for solving permutational optimizat...
The efficacy of Hyper-Heuristics in tackling NP-hard Combinatorial Optimization problems has been w...
There exist many problem-specific heuristic frameworks for solving combinatorial optimization proble...