Most metaheuristic optimizers rely heavily on precisely setting their control parameters and search operators to perform well. Considering the complexity of real-world problems, it is always preferable to adjust control parameter values automatically rather than clamp-ing them to a fixed value. In recent years, Spherical Search (SS) has emerged as a population-based stochastic optimization method that exploits the concepts of random projection matrices in linear algebra. As a result of the success of SS in solving non -convex, real-parameter optimization problems of various complexity, we have significantly extended SS in this paper by introducing a set of new algorithms, collectively known as Self Adaptive Spherical Search (SASS). Our prop...
This version of the article has been accepted for publication, after peer review (when applicable) a...
This paper introduces a new self-tuning mechanism to the local search heuristic for solving of combi...
Complex tasks in Computer Science can be reformulated as optimization problems, in which the global ...
Since the last three decades, numerous search strategies have been introduced within the framework o...
A new metaheuristic global optimization method for non-linear and nondifferentiable problems is prop...
This paper introduces the Mesh Adaptive Direct Search (MADS) class of algorithms for nonlinear optim...
Nowadays, optimization problems are solved through meta-heuristic algorithms based on stochastic sea...
In this paper, we propose a stochastic search algorithm for solving general optimization problems wi...
A greedy randomized adaptive search procedure (GRASP) is an iterative multistart metaheuristic for d...
Conventional random search techniques take a lot of time to reach optimum-like solutions. Thus, rand...
In this article, a new population-based algorithm for real-parameter global optimization is presente...
This dissertation is motivated by the problem of finding a global minimizer or a feasible argument f...
Minimization with orthogonality constraints (e.g., X'X = I) and/or spherical constraints (e.g., ||x|...
We study a class of random sampling-based algorithms for solving general non-convex, nondifferentiab...
Preprint accepted for publication in Neural Computation It is seemingly paradoxical to the classical...
This version of the article has been accepted for publication, after peer review (when applicable) a...
This paper introduces a new self-tuning mechanism to the local search heuristic for solving of combi...
Complex tasks in Computer Science can be reformulated as optimization problems, in which the global ...
Since the last three decades, numerous search strategies have been introduced within the framework o...
A new metaheuristic global optimization method for non-linear and nondifferentiable problems is prop...
This paper introduces the Mesh Adaptive Direct Search (MADS) class of algorithms for nonlinear optim...
Nowadays, optimization problems are solved through meta-heuristic algorithms based on stochastic sea...
In this paper, we propose a stochastic search algorithm for solving general optimization problems wi...
A greedy randomized adaptive search procedure (GRASP) is an iterative multistart metaheuristic for d...
Conventional random search techniques take a lot of time to reach optimum-like solutions. Thus, rand...
In this article, a new population-based algorithm for real-parameter global optimization is presente...
This dissertation is motivated by the problem of finding a global minimizer or a feasible argument f...
Minimization with orthogonality constraints (e.g., X'X = I) and/or spherical constraints (e.g., ||x|...
We study a class of random sampling-based algorithms for solving general non-convex, nondifferentiab...
Preprint accepted for publication in Neural Computation It is seemingly paradoxical to the classical...
This version of the article has been accepted for publication, after peer review (when applicable) a...
This paper introduces a new self-tuning mechanism to the local search heuristic for solving of combi...
Complex tasks in Computer Science can be reformulated as optimization problems, in which the global ...