The application of Genetic Programming to the discovery of empirical laws is often impaired by the huge size of the search space, and consequently by the computer resources needed. In many cases, the extreme demand for memory and CPU is due to the massive growth of non-coding segments, the introns. The paper presents a new program evolution framework which combines distribution-based evolution in the PBIL spirit, with grammar-based genetic programming; the information is stored as a probability distribution on the gra mmar rules, rather than in a population. Experiments on a real-world like problem show that this approach gives a practical solution to the problem of intron growth
This paper describes an evolutionary approach to the problem of inferring stochastic context-free gr...
Grammar-based Genetic Programming (GBGP) searches for a computer program in order to solve a given p...
Code bloat, the excessive increase of code size, is an important is- sue in Genetic Programming (GP)...
The application of Genetic Programming to the discovery of empirical laws is often impaired by the h...
The application of Genetic Programming to the discovery of empirical laws is often impaired by the h...
We have previously used grammars as a formalism to structure a GA's search for program called s...
International audienceThis paper proposes a theoretical analysis of Genetic Programming (GP) from th...
Grammar-Based Genetic Programming (GBGP) improves the search performance of Genetic Programming (GP)...
Bloat is one of the most widely studied phenomena in Genetic Programming (GP), it is normally define...
Strict pattern-based methods of grammar induction are often frustrated by the apparently inexhaustib...
Genetic Programming is an evolutionary computation technique which searches for those computer progr...
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 paper describes an evolutionary approach to the problem of inferring stochastic context-free gr...
Grammar-based Genetic Programming (GBGP) searches for a computer program in order to solve a given p...
Code bloat, the excessive increase of code size, is an important is- sue in Genetic Programming (GP)...
The application of Genetic Programming to the discovery of empirical laws is often impaired by the h...
The application of Genetic Programming to the discovery of empirical laws is often impaired by the h...
We have previously used grammars as a formalism to structure a GA's search for program called s...
International audienceThis paper proposes a theoretical analysis of Genetic Programming (GP) from th...
Grammar-Based Genetic Programming (GBGP) improves the search performance of Genetic Programming (GP)...
Bloat is one of the most widely studied phenomena in Genetic Programming (GP), it is normally define...
Strict pattern-based methods of grammar induction are often frustrated by the apparently inexhaustib...
Genetic Programming is an evolutionary computation technique which searches for those computer progr...
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 paper describes an evolutionary approach to the problem of inferring stochastic context-free gr...
Grammar-based Genetic Programming (GBGP) searches for a computer program in order to solve a given p...
Code bloat, the excessive increase of code size, is an important is- sue in Genetic Programming (GP)...