International audienceThis paper proposes a theoretical analysis of Genetic Programming (GP) from the perspective of statistical learning theory, a well grounded mathematical toolbox for machine learning. By computing the Vapnik-Chervonenkis dimension of the family of programs that can be inferred by a specific setting of GP, it is proved that a parsimonious fitness ensures universal consistency. This means that the empirical error minimization allows convergence to the best possible error when the number of test cases goes to infinity. However, it is also proved that the standard method consisting in putting a hard limit on the program size still results in programs of infinitely increasing size in function of their accuracy. It is also sh...
4siGeneralization is an important issue in machine learning. In fact, in several applications good r...
The objectives of this research are to develop a predictive theory of the Breeder Genetic Algorithm ...
Apprentissage statistique et programmation génétique: la croissance du code est-elle inévitable
International audienceThis paper proposes a theoretical analysis of Genetic Programming (GP) from th...
Abstract. This paper proposes a theoretical analysis of Genetic Pro-gramming (GP) from the perspecti...
Abstract. Universal Consistency, the convergence to the minimum possible er-ror rate in learning thr...
ABSTRACT. In this paper, we provide an analysis of Genetic Programming (GP) from the Statis-tical Le...
Universal Consistency, the convergence to the minimum possible error rate in learning through geneti...
Code bloat, the excessive increase of code size, is an important is- sue in Genetic Programming (GP)...
4siThe relationship between generalization and solutions functional complexity in genetic programmin...
Fitness functions based on test cases are very common in Genetic Programming (GP). This process can ...
Genetic programming (GP) is an automated method for creating a working computer program from a high-...
In this paper, we provide an analysis of Genetic Programming (GP) from the Statistical Learning Theo...
The ability to generalize beyond the training set is important for Genetic Programming (GP). Interle...
A study on the performance of solutions generated by Genetic Programming (GP) when the training set ...
4siGeneralization is an important issue in machine learning. In fact, in several applications good r...
The objectives of this research are to develop a predictive theory of the Breeder Genetic Algorithm ...
Apprentissage statistique et programmation génétique: la croissance du code est-elle inévitable
International audienceThis paper proposes a theoretical analysis of Genetic Programming (GP) from th...
Abstract. This paper proposes a theoretical analysis of Genetic Pro-gramming (GP) from the perspecti...
Abstract. Universal Consistency, the convergence to the minimum possible er-ror rate in learning thr...
ABSTRACT. In this paper, we provide an analysis of Genetic Programming (GP) from the Statis-tical Le...
Universal Consistency, the convergence to the minimum possible error rate in learning through geneti...
Code bloat, the excessive increase of code size, is an important is- sue in Genetic Programming (GP)...
4siThe relationship between generalization and solutions functional complexity in genetic programmin...
Fitness functions based on test cases are very common in Genetic Programming (GP). This process can ...
Genetic programming (GP) is an automated method for creating a working computer program from a high-...
In this paper, we provide an analysis of Genetic Programming (GP) from the Statistical Learning Theo...
The ability to generalize beyond the training set is important for Genetic Programming (GP). Interle...
A study on the performance of solutions generated by Genetic Programming (GP) when the training set ...
4siGeneralization is an important issue in machine learning. In fact, in several applications good r...
The objectives of this research are to develop a predictive theory of the Breeder Genetic Algorithm ...
Apprentissage statistique et programmation génétique: la croissance du code est-elle inévitable