Due to the rapid increase of dimensions and complexity of real life problems, it has become more difficult to find optimal solutions using only exact mathematical methods. The need to find near-optimal solutions in an acceptable amount of time is a challenge when developing more sophisticated approaches. A proper answer to this challenge can be through the implementation of metaheuristic approaches. However, a more powerful answer might be reached by incorporating intelligence into metaheuristics. Meta-RaPS (Metaheuristic for Randomized Priority Search) is a metaheuristic that creates high quality solutions for discrete optimization problems. It is proposed that incorporating memory and learning mechanisms into Meta-RaPS, which is currently...
Today, combinatorial optimization is one of the youngest and most active areas of discrete mathemati...
Optimization has become such a favored area of research in recent times necessitating the need for t...
The majority of the algorithms used to solve hard optimization problems today are population metaheu...
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...
In their search for satisfactory solutions to complex combinatorial problems, metaheuristics methods...
AbstractIn their search for satisfactory solutions to complex combinatorial problems, metaheuristics...
Finding near-optimal solutions in an acceptable amount of time is a challenge when developing sophis...
Though metaheuristics have been frequently employed to improve the performance of data mining algori...
Most heuristics for discrete optimization problems consist of two phases: a greedy-based constructio...
Recently meta-heuristics have become a popular solution methodology, in terms of both research and a...
Today and always, human progress has been linked, among other aspects, to the capacity of facing pro...
Optimization problems appear in many fields, as various as identification problems, supervised learn...
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, combinatorial optimization is one of the youngest and most active areas of discrete mathemati...
Optimization has become such a favored area of research in recent times necessitating the need for t...
The majority of the algorithms used to solve hard optimization problems today are population metaheu...
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...
In their search for satisfactory solutions to complex combinatorial problems, metaheuristics methods...
AbstractIn their search for satisfactory solutions to complex combinatorial problems, metaheuristics...
Finding near-optimal solutions in an acceptable amount of time is a challenge when developing sophis...
Though metaheuristics have been frequently employed to improve the performance of data mining algori...
Most heuristics for discrete optimization problems consist of two phases: a greedy-based constructio...
Recently meta-heuristics have become a popular solution methodology, in terms of both research and a...
Today and always, human progress has been linked, among other aspects, to the capacity of facing pro...
Optimization problems appear in many fields, as various as identification problems, supervised learn...
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, combinatorial optimization is one of the youngest and most active areas of discrete mathemati...
Optimization has become such a favored area of research in recent times necessitating the need for t...
The majority of the algorithms used to solve hard optimization problems today are population metaheu...