This thesis studies grammar-based approaches in the application of Estimation of Distribution Algorithms (EDA) to the tree representation widely used in GeneticProgramming (GP). Although EDA is becoming one of the most active fields in Evolutionary computation (EC), the solution representation in most EDA is a Genetic Algorithms (GA) style linear representation. The more complex tree representations, resembling GP, have received only limited exploration. This is unfortunate, because tree representations provide a natural and expressive way of representing solutions for many problems. This thesis aims to help fill this gap, exploring grammar-based approaches to extending EDA to GP-style tree representations. This thesis firstly provides a c...
This thesis principally addresses some problems in genetic programming (GP) and grammar-guided genet...
The grammars used in grammar-based Genetic Programming (GP) methods have a significant impact on the...
The application of Genetic Programming to the discovery of empirical laws is often impaired by the h...
Abstract. In this paper we present a new Estimation–of–Distribution Algorithm (EDA) for Genetic Prog...
Abstract. Genetic Programming (GP) provides evolutionary methods for problems with tree representati...
Fundamental research into Genetic Algorithms (GA) has led to one of the biggest successes in the de...
There has been growing interest in Estimation of Distribution Algorithms (EDA). Conventional EDA mai...
We present N-gram GP, an estimation of distribution algorithm for the evolution of linear computer p...
The application of Genetic Programming to the discovery of empirical laws is often impaired by the h...
Tree-based genetic programming (GP) has several known shortcomings: difficult adaptability to specif...
We present N-gram GP, an estimation of distribution algorithm for the evolution of linear computer p...
Congress on Evolutionary Computation, IEEE World Congress on Computational Intelligence, Barcelona, ...
In this paper, a genetic algorithm with minimum description length (GAWMDL) is proposed for grammati...
This paper describes an evolutionary approach to the problem of inferring stochastic context-free gr...
This paper describes an evolutionary approach to the problem of inferring stochastic context-free gr...
This thesis principally addresses some problems in genetic programming (GP) and grammar-guided genet...
The grammars used in grammar-based Genetic Programming (GP) methods have a significant impact on the...
The application of Genetic Programming to the discovery of empirical laws is often impaired by the h...
Abstract. In this paper we present a new Estimation–of–Distribution Algorithm (EDA) for Genetic Prog...
Abstract. Genetic Programming (GP) provides evolutionary methods for problems with tree representati...
Fundamental research into Genetic Algorithms (GA) has led to one of the biggest successes in the de...
There has been growing interest in Estimation of Distribution Algorithms (EDA). Conventional EDA mai...
We present N-gram GP, an estimation of distribution algorithm for the evolution of linear computer p...
The application of Genetic Programming to the discovery of empirical laws is often impaired by the h...
Tree-based genetic programming (GP) has several known shortcomings: difficult adaptability to specif...
We present N-gram GP, an estimation of distribution algorithm for the evolution of linear computer p...
Congress on Evolutionary Computation, IEEE World Congress on Computational Intelligence, Barcelona, ...
In this paper, a genetic algorithm with minimum description length (GAWMDL) is proposed for grammati...
This paper describes an evolutionary approach to the problem of inferring stochastic context-free gr...
This paper describes an evolutionary approach to the problem of inferring stochastic context-free gr...
This thesis principally addresses some problems in genetic programming (GP) and grammar-guided genet...
The grammars used in grammar-based Genetic Programming (GP) methods have a significant impact on the...
The application of Genetic Programming to the discovery of empirical laws is often impaired by the h...