Abstract. Genetic Programming (GP) provides evolutionary methods for problems with tree representations. A recent development in Genetic Algorithms (GAs) has led to principled algorithms called Estimation–of– Distribution Algorithms (EDAs). EDAs identify and exploit structural features of a problem’s structure during optimization. Here, we investigate the use of a specific EDA for GP. We develop a probabilistic model that employs transformations of production rules in a context–free grammar to represent local structures. The results of performing experiments on two benchmark problems demonstrate the feasibility of the approach.
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...
Abstract. The ability of Genetic Programming to scale to problems of increasing difficulty operates ...
Abstract. In this paper we present a new Estimation–of–Distribution Algorithm (EDA) for Genetic Prog...
This thesis studies grammar-based approaches in the application of Estimation of Distribution Algori...
Fundamental research into Genetic Algorithms (GA) has led to one of the biggest successes in the de...
The application of Genetic Programming to the discovery of empirical laws is often impaired by the h...
Grammar-Based Genetic Programming (GBGP) improves the search performance of Genetic Programming (GP)...
Grammar-based Genetic Programming (GBGP) searches for a computer program in order to solve a given p...
Several grammar-based genetic programming algorithms have been proposed in the literature to automat...
The grammars used in grammar-based Genetic Programming (GP) methods have a significant impact on the...
AbstractEstimation of Distribution Algorithms in Genetic Programming (EDA-GP) are algorithms applyin...
The probabilistic model building performed by estimation of distribution algorithms (EDAs) enables t...
The focus of this paper is towards developing a grammatical inference system uses a genetic algorith...
Structure of a grammar can influence how well a Grammar-Based Genetic Programming system solves a gi...
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...
Abstract. The ability of Genetic Programming to scale to problems of increasing difficulty operates ...
Abstract. In this paper we present a new Estimation–of–Distribution Algorithm (EDA) for Genetic Prog...
This thesis studies grammar-based approaches in the application of Estimation of Distribution Algori...
Fundamental research into Genetic Algorithms (GA) has led to one of the biggest successes in the de...
The application of Genetic Programming to the discovery of empirical laws is often impaired by the h...
Grammar-Based Genetic Programming (GBGP) improves the search performance of Genetic Programming (GP)...
Grammar-based Genetic Programming (GBGP) searches for a computer program in order to solve a given p...
Several grammar-based genetic programming algorithms have been proposed in the literature to automat...
The grammars used in grammar-based Genetic Programming (GP) methods have a significant impact on the...
AbstractEstimation of Distribution Algorithms in Genetic Programming (EDA-GP) are algorithms applyin...
The probabilistic model building performed by estimation of distribution algorithms (EDAs) enables t...
The focus of this paper is towards developing a grammatical inference system uses a genetic algorith...
Structure of a grammar can influence how well a Grammar-Based Genetic Programming system solves a gi...
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...
Abstract. The ability of Genetic Programming to scale to problems of increasing difficulty operates ...