Abstract—The synthesis of exact integer algorithms is a hard task for Genetic Programming (GP), as it exhibits epistasis and deceptiveness. Most existing studies in this domain only target few and simple problems or test a small set of different representations. In this paper, we present the (to the best of our knowledge) largest study on this domain to date. We first propose a novel benchmark suite of 20 non-trivial problems with a variety of different features. We then test two approaches to reduce the impact of the negative features: (a) a new nested form of Transactional Memory (TM) to reduce epistatic effects by allowing instructions in the program code to be permutated with less impact on the program behavior and (b) our recently publ...
In this paper we explore a number of ideas for enhancing the techniques of genetic programming in th...
Genetic Programming is increasing in popularity as the basis for a wide range of learning algorithms...
The thesis is about linear genetic programming (LGP), a machine learning approach that evolves compu...
Contents This is the presentation for conference paper [1]. You can find the citation information an...
Abstract—In this article, we evaluate the applicability of Genetic Programming (GP) for the evolutio...
We present new techniques for synthesizing programs through sequences of mutations. Among these are ...
[[abstract]]Although genetic programming (GP) is derived from genetic algorithm (GA), there are issu...
: Genetic Programming is a method for evolving functions that find approximate or exact solutions to...
Genetic programming (GP) is a subclass of genetic algorithms (GAs), in which evolving programs are d...
International audienceThis paper proposes a theoretical analysis of Genetic Programming (GP) from th...
Summary. This paper discusses scalability of standard genetic programming (GP) and the probabilistic...
This paper contributes to the rigorous understanding of genetic programming algorithms by providing ...
Genetic algorithm (GA) is a well known algorithm applied to a wide variety of optimization problems ...
A recent article on benchmark problems for genetic program-ming suggested that researchers focus att...
Congress on Evolutionary Computation. Portland, EEUU, 19-23 June 2004The design of pseudorandom numb...
In this paper we explore a number of ideas for enhancing the techniques of genetic programming in th...
Genetic Programming is increasing in popularity as the basis for a wide range of learning algorithms...
The thesis is about linear genetic programming (LGP), a machine learning approach that evolves compu...
Contents This is the presentation for conference paper [1]. You can find the citation information an...
Abstract—In this article, we evaluate the applicability of Genetic Programming (GP) for the evolutio...
We present new techniques for synthesizing programs through sequences of mutations. Among these are ...
[[abstract]]Although genetic programming (GP) is derived from genetic algorithm (GA), there are issu...
: Genetic Programming is a method for evolving functions that find approximate or exact solutions to...
Genetic programming (GP) is a subclass of genetic algorithms (GAs), in which evolving programs are d...
International audienceThis paper proposes a theoretical analysis of Genetic Programming (GP) from th...
Summary. This paper discusses scalability of standard genetic programming (GP) and the probabilistic...
This paper contributes to the rigorous understanding of genetic programming algorithms by providing ...
Genetic algorithm (GA) is a well known algorithm applied to a wide variety of optimization problems ...
A recent article on benchmark problems for genetic program-ming suggested that researchers focus att...
Congress on Evolutionary Computation. Portland, EEUU, 19-23 June 2004The design of pseudorandom numb...
In this paper we explore a number of ideas for enhancing the techniques of genetic programming in th...
Genetic Programming is increasing in popularity as the basis for a wide range of learning algorithms...
The thesis is about linear genetic programming (LGP), a machine learning approach that evolves compu...