This paper discusses a tool for optimization of econometric models based on genetic algorithms. First, we briefly describe the concept of this optimization technique. Then, we explain the design of a specifically developed algorithm and apply it to a difficult econometric problem, the semiparametric estimation of a censored regression model. We carry out some Monte Carlo simulations and compare the genetic algorithm with another technique, the iterative linear programming algorithm, to run the censored least absolute deviation estimator. It turns out that both algorithms lead to similar results in this case, but that the proposed method is computationally more stable than its competitor
The aim of our contribution relies on studying the possibility of implementing a genetic algorithm i...
The increasing computational power of modern computers has contributed to the advance of nature-insp...
The genetic algorithm can be applied to selecting theoretical probability distributions so as to be ...
This paper discusses a tool for optimization of econometric models based on genetic algorithms. Firs...
Abstract: Genetic Algorithm (GA) is a calculus free optimization technique based on principles of na...
This study provides a short introduction and an overview of the basics of genetic programming (GP) a...
R software is considered software in which various available functions make it possible to conduct e...
Not AvailableThe conventional ordinary least squares (OLS) variance-covariance matrix estimator for ...
Some non-linear optimisation problems are difficult to solve by con-ventional hill-climbing methods,...
Abstract---Genetic algorithms represent an efficient global method for nonlinear optimization proble...
In this paper, some new algorithms for estimating the biasing parameters of the ridge, Liu and two-p...
When a Genetic Algorithm (GA), or in general a stochastic algorithm, is employed in a statistical pr...
A common type of problem encountered in mathematics is optimizing nonlinear functions. Many popular ...
A common type of problem encountered in mathematics is optimizing nonlinear functions. Many popular ...
In this paper, we provide a general formulation for the problems that arise in the computation of ma...
The aim of our contribution relies on studying the possibility of implementing a genetic algorithm i...
The increasing computational power of modern computers has contributed to the advance of nature-insp...
The genetic algorithm can be applied to selecting theoretical probability distributions so as to be ...
This paper discusses a tool for optimization of econometric models based on genetic algorithms. Firs...
Abstract: Genetic Algorithm (GA) is a calculus free optimization technique based on principles of na...
This study provides a short introduction and an overview of the basics of genetic programming (GP) a...
R software is considered software in which various available functions make it possible to conduct e...
Not AvailableThe conventional ordinary least squares (OLS) variance-covariance matrix estimator for ...
Some non-linear optimisation problems are difficult to solve by con-ventional hill-climbing methods,...
Abstract---Genetic algorithms represent an efficient global method for nonlinear optimization proble...
In this paper, some new algorithms for estimating the biasing parameters of the ridge, Liu and two-p...
When a Genetic Algorithm (GA), or in general a stochastic algorithm, is employed in a statistical pr...
A common type of problem encountered in mathematics is optimizing nonlinear functions. Many popular ...
A common type of problem encountered in mathematics is optimizing nonlinear functions. Many popular ...
In this paper, we provide a general formulation for the problems that arise in the computation of ma...
The aim of our contribution relies on studying the possibility of implementing a genetic algorithm i...
The increasing computational power of modern computers has contributed to the advance of nature-insp...
The genetic algorithm can be applied to selecting theoretical probability distributions so as to be ...