AbstractIn their search for satisfactory solutions to complex combinatorial problems, metaheuristics methods are expected to intelligently explore the solution space. Various forms of memory have been used to achieve this goal and improve the performance of metaheuristics, which warranted the development of the Adaptive Memory Programming (AMP) framework [1]. This paper follows this framework by integrating Machine Learning (ML) concepts into metaheuristics as a way to guide metaheuristics while searching for solutions. The target metaheuristic method is Meta-heuristic for Randomized Priority Search (Meta-RaPS). Similar to most metaheuristics, Meta-RaPS consists of construction and improvement phases. Randomness coupled with a greedy heuris...
The majority of the algorithms used to solve hard optimization problems today are population metaheu...
The Vehicle Routing Problem (VRP) is one of the most intensively studied combinatorial optimization ...
Metaheuristics are approximation methods used to solve combinatorial optimization problems. Their pe...
In their search for satisfactory solutions to complex combinatorial problems, metaheuristics methods...
AbstractIn their search for satisfactory solutions to complex combinatorial problems, metaheuristics...
Due to the rapid increase of dimensions and complexity of real life problems, it has become more dif...
This dissertation focuses on advancing the Metaheuristic for Randomized Priority Search algorithm, k...
Though metaheuristics have been frequently employed to improve the performance of data mining algori...
AbstractThough metaheuristics have been frequently employed to improve the performance of data minin...
International audienceDuring the past few years, research in applying machine learning (ML) to desig...
Today and always, human progress has been linked, among other aspects, to the capacity of facing pro...
Most heuristics for discrete optimization problems consist of two phases: a greedy-based constructio...
In recent years, there have been significant advances in the theory and application of metaheuristic...
Advisors: Reinaldo J. Moraga; Shi-Jie Gary Chen.Committee members: Ziteng Wang.Includes bibliographi...
Metaheuristic algorithms have been investigated intensively to address highly complex combinatorial ...
The majority of the algorithms used to solve hard optimization problems today are population metaheu...
The Vehicle Routing Problem (VRP) is one of the most intensively studied combinatorial optimization ...
Metaheuristics are approximation methods used to solve combinatorial optimization problems. Their pe...
In their search for satisfactory solutions to complex combinatorial problems, metaheuristics methods...
AbstractIn their search for satisfactory solutions to complex combinatorial problems, metaheuristics...
Due to the rapid increase of dimensions and complexity of real life problems, it has become more dif...
This dissertation focuses on advancing the Metaheuristic for Randomized Priority Search algorithm, k...
Though metaheuristics have been frequently employed to improve the performance of data mining algori...
AbstractThough metaheuristics have been frequently employed to improve the performance of data minin...
International audienceDuring the past few years, research in applying machine learning (ML) to desig...
Today and always, human progress has been linked, among other aspects, to the capacity of facing pro...
Most heuristics for discrete optimization problems consist of two phases: a greedy-based constructio...
In recent years, there have been significant advances in the theory and application of metaheuristic...
Advisors: Reinaldo J. Moraga; Shi-Jie Gary Chen.Committee members: Ziteng Wang.Includes bibliographi...
Metaheuristic algorithms have been investigated intensively to address highly complex combinatorial ...
The majority of the algorithms used to solve hard optimization problems today are population metaheu...
The Vehicle Routing Problem (VRP) is one of the most intensively studied combinatorial optimization ...
Metaheuristics are approximation methods used to solve combinatorial optimization problems. Their pe...