3noThe NK landscapes are a well known benchmark for genetic algorithms (GAs) in which it is possible to tune the ruggedness of the fitness landscape by simply modifying the value of a parameter K. They have successfully been used in many theoretical studies, allowing researchers to discover interesting properties of the GAs dynamics in presence of rugged landscapes. A similar benchmark does not exist for genetic programming (GP) yet. Nevertheless, during the EuroGP conference debates of the last few years, the necessity of defining new benchmark problems for GP has repeatedly been expressed by a large part of the attendees. This paper is intended to fill this gap, by introducing an extension of the NK landscapes to tree based GP, that we ca...
Evolution is an incredibly complex process that has been the subject of scientific study for well ov...
is a recently introduced form of Genetic Programming (GP), rooted in a geometric theory of represent...
4siThe relationship between generalization and solutions functional complexity in genetic programmin...
NK--landscapes offer the ability to assess the performance of evolutionary algorithms on problems wi...
Genetic algorithms (GAs) have been used to find efficient solutions to numerous fundamental and appl...
This paper presents an empirical study of NK landscapes with the main focus on the relationship betw...
NK fitness landscapes are stochastically generated fitness functions on bit strings, parameterized (...
We introduce the CliqueTreeMk algorithm to construct tree decomposition (TD) Mk Landscapes and to co...
Genetic Programming is an evolutionary computation technique which searches for those computer progr...
Abstract. This paper presents an investigation of genetic programming fitness landscapes. We propose...
One serious problem of standard Genetic Programming (GP) is that evolved structures appear to drift ...
International audienceThis paper presents an investigation of genetic programming fitness landscapes...
International audienceNeutrality of genetic programming Boolean function landscapes is investigated ...
NK models provide a family of tunably rugged fitness landscapes used in a wide range of evolutionary...
Recent research into the evolution of RNA molecules has raised awareness of the neutral theory of ev...
Evolution is an incredibly complex process that has been the subject of scientific study for well ov...
is a recently introduced form of Genetic Programming (GP), rooted in a geometric theory of represent...
4siThe relationship between generalization and solutions functional complexity in genetic programmin...
NK--landscapes offer the ability to assess the performance of evolutionary algorithms on problems wi...
Genetic algorithms (GAs) have been used to find efficient solutions to numerous fundamental and appl...
This paper presents an empirical study of NK landscapes with the main focus on the relationship betw...
NK fitness landscapes are stochastically generated fitness functions on bit strings, parameterized (...
We introduce the CliqueTreeMk algorithm to construct tree decomposition (TD) Mk Landscapes and to co...
Genetic Programming is an evolutionary computation technique which searches for those computer progr...
Abstract. This paper presents an investigation of genetic programming fitness landscapes. We propose...
One serious problem of standard Genetic Programming (GP) is that evolved structures appear to drift ...
International audienceThis paper presents an investigation of genetic programming fitness landscapes...
International audienceNeutrality of genetic programming Boolean function landscapes is investigated ...
NK models provide a family of tunably rugged fitness landscapes used in a wide range of evolutionary...
Recent research into the evolution of RNA molecules has raised awareness of the neutral theory of ev...
Evolution is an incredibly complex process that has been the subject of scientific study for well ov...
is a recently introduced form of Genetic Programming (GP), rooted in a geometric theory of represent...
4siThe relationship between generalization and solutions functional complexity in genetic programmin...