We present N-gram GP, an estimation of distribution algorithm for the evolution of linear computer programs. The algorithm learns and samples the joint probability distribution of triplets of instructions (or 3-grams) at the same time as it is learning and sampling a program length distribution. We have tested N-gram GP on symbolic regressions problems where the target function is a polynomial of up to degree 12 and lawn-mower problems with lawn sizes of up to 12 × 12. Results show that the algorithm is effective and scales better on these problems than either linear GP or simple stochastic hill-climbing.
Fitness distributions (landscapes) of programs tend to a limit as they get bigger. Markov chain conv...
There has been growing interest in Estimation of Distribution Algorithms (EDA). Conventional EDA mai...
Abstract. In this paper we introduce an estimation of distribution algorithm based on a team of lear...
We present N-gram GP, an estimation of distribution algorithm for the evolution of linear computer p...
This thesis studies grammar-based approaches in the application of Estimation of Distribution Algori...
This chapter serves as an introduction to estimation of distribution algorithms (EDAs). Estimation o...
Abstract. In this paper we present a new Estimation–of–Distribution Algorithm (EDA) for Genetic Prog...
In this talk I present N-gram GP, a system for evolving linear GP programs using an EDA style system...
Fundamental research into Genetic Algorithms (GA) has led to one of the biggest successes in the de...
International audienceWe propose a general formulation of a univariate estimationof-distribution alg...
Abstract. This paper discusses the performance of a hybrid system which consists of EDP and GP. EDP,...
Abstract. Genetic Programming (GP) provides evolutionary methods for problems with tree representati...
Abstract. This paper proposes a theoretical analysis of Genetic Pro-gramming (GP) from the perspecti...
We present an algorithm for computing exact expressions for the distribution of the maximum or minim...
Model complexity has a close relationship with the generalization ability and the interpretability o...
Fitness distributions (landscapes) of programs tend to a limit as they get bigger. Markov chain conv...
There has been growing interest in Estimation of Distribution Algorithms (EDA). Conventional EDA mai...
Abstract. In this paper we introduce an estimation of distribution algorithm based on a team of lear...
We present N-gram GP, an estimation of distribution algorithm for the evolution of linear computer p...
This thesis studies grammar-based approaches in the application of Estimation of Distribution Algori...
This chapter serves as an introduction to estimation of distribution algorithms (EDAs). Estimation o...
Abstract. In this paper we present a new Estimation–of–Distribution Algorithm (EDA) for Genetic Prog...
In this talk I present N-gram GP, a system for evolving linear GP programs using an EDA style system...
Fundamental research into Genetic Algorithms (GA) has led to one of the biggest successes in the de...
International audienceWe propose a general formulation of a univariate estimationof-distribution alg...
Abstract. This paper discusses the performance of a hybrid system which consists of EDP and GP. EDP,...
Abstract. Genetic Programming (GP) provides evolutionary methods for problems with tree representati...
Abstract. This paper proposes a theoretical analysis of Genetic Pro-gramming (GP) from the perspecti...
We present an algorithm for computing exact expressions for the distribution of the maximum or minim...
Model complexity has a close relationship with the generalization ability and the interpretability o...
Fitness distributions (landscapes) of programs tend to a limit as they get bigger. Markov chain conv...
There has been growing interest in Estimation of Distribution Algorithms (EDA). Conventional EDA mai...
Abstract. In this paper we introduce an estimation of distribution algorithm based on a team of lear...