In the framework of multistart and local search algorithms that find the global minimum of a real function f(x), x ∈ S ⊆ Rn, Gaviano et alias proposed a rule for deciding, as soon as a local minimum has been found, whether to perform or not a new local minimization. That rule was designed to minimize the average local computational cost eval1(·) required to move from the current local minimum to a new one. In this paper the expression of the cost eval2(·) of the entire process of getting a global minimum is found and investigated; it is shown that eval2(·) has among its components eval1(·) and can be only monotonically increasing or decreasing; that is, it exhibits the same property of eval1(·). Moreover, a counterexample is given that ...
We present an algorithm for finding a global minimum of a multimodal, multivariate functionwhose eva...
This paper deals with algorithms based on the Moving Polytope Method for solving nonlinear optimizat...
Specialized techniques are needed to solve global optimization problems, due to the existence of mul...
In the framework of multistart and local search algorithms that find the global minimum of a real f...
A large number of algorithms introduced in the literature to find the global minimum of a real func...
The problem of finding a global minimum of a real function on a set S Rn occurs in many real world p...
The problem of finding a global minimum of a real function on a set S of Rn occurs in many real worl...
The problem of finding a global minimum of a real function on a set S of Rn occurs in many real worl...
Gradient-based optimization algorithms are probably the most efficient option for the solution of a ...
Global optimization problems arise in a wide range of real-world problems. They include applications...
Global optimization problems arise in a wide range of real-world problems. They include applications...
Global optimization problems arise in a wide range of real-world problems. They include applications...
Global optimization problems arise in a wide range of real-world problems. They include applications...
Global optimization problems arise in a wide range of real-world problems. They include applications...
There the class of parallel characteristic parallel algorithms for solution of problems of global op...
We present an algorithm for finding a global minimum of a multimodal, multivariate functionwhose eva...
This paper deals with algorithms based on the Moving Polytope Method for solving nonlinear optimizat...
Specialized techniques are needed to solve global optimization problems, due to the existence of mul...
In the framework of multistart and local search algorithms that find the global minimum of a real f...
A large number of algorithms introduced in the literature to find the global minimum of a real func...
The problem of finding a global minimum of a real function on a set S Rn occurs in many real world p...
The problem of finding a global minimum of a real function on a set S of Rn occurs in many real worl...
The problem of finding a global minimum of a real function on a set S of Rn occurs in many real worl...
Gradient-based optimization algorithms are probably the most efficient option for the solution of a ...
Global optimization problems arise in a wide range of real-world problems. They include applications...
Global optimization problems arise in a wide range of real-world problems. They include applications...
Global optimization problems arise in a wide range of real-world problems. They include applications...
Global optimization problems arise in a wide range of real-world problems. They include applications...
Global optimization problems arise in a wide range of real-world problems. They include applications...
There the class of parallel characteristic parallel algorithms for solution of problems of global op...
We present an algorithm for finding a global minimum of a multimodal, multivariate functionwhose eva...
This paper deals with algorithms based on the Moving Polytope Method for solving nonlinear optimizat...
Specialized techniques are needed to solve global optimization problems, due to the existence of mul...