The application of multi-objective evolutionary computation techniques to the genetic programming of classifiers has the potential to both improve the accuracy and decrease the training time of the classifiers.The performance of two such algorithms are investigated on the even 6-parity problem and the Wisconsin Breast Cancer, Iris and Wine data sets from the UCI repository. The first method explores the addition of an explicit size objective as a parsimony enforcement technique. The second represents a program¿s classification accuracy on each class as a separate objective. Both techniques give a lower error rate with less computational cost than was achieved using a standard GP with the same parameters
In this paper a multiclass classification problem solving technique based on genetic programming is ...
Tese de mestrado, Engenharia Informática (Interação e Conhecimento) Universidade de Lisboa, Faculdad...
4siGeneralization is an important issue in machine learning. In fact, in several applications good r...
AbstractGenetic programming (GP) is a flexible and powerful evolutionary technique with some special...
This paper presents a new genetic algorithm approach to multi-objective optimization problemsIncreme...
Fitness functions based on test cases are very common in Genetic Programming (GP). This process can ...
This paper considers the need to re-train a multiclass classifier that has initially been evolved us...
Multi-objective optimization has played a major role in solving problems where two or more conflicti...
Evolutionary algorithms are one category of optimization techniques that are inspired by processes o...
Feature extraction transforms high dimensional data into a new subspace of lower dimensionalitywhil...
The purpose of this paper is to demonstrate the ability of a genetic programming (GP) algorithm to e...
3noThis work introduces a new technique for features construction in classification problems by mean...
The codebase for this paper is available at https://github.com/fieldsend/gecco_2015_mogpAn underlyin...
The study of semantics in Genetic Programming (GP) has increased dramatically over the last years du...
This paper explores the feasibility of applying genetic programming (GP) to multicategory pattern cl...
In this paper a multiclass classification problem solving technique based on genetic programming is ...
Tese de mestrado, Engenharia Informática (Interação e Conhecimento) Universidade de Lisboa, Faculdad...
4siGeneralization is an important issue in machine learning. In fact, in several applications good r...
AbstractGenetic programming (GP) is a flexible and powerful evolutionary technique with some special...
This paper presents a new genetic algorithm approach to multi-objective optimization problemsIncreme...
Fitness functions based on test cases are very common in Genetic Programming (GP). This process can ...
This paper considers the need to re-train a multiclass classifier that has initially been evolved us...
Multi-objective optimization has played a major role in solving problems where two or more conflicti...
Evolutionary algorithms are one category of optimization techniques that are inspired by processes o...
Feature extraction transforms high dimensional data into a new subspace of lower dimensionalitywhil...
The purpose of this paper is to demonstrate the ability of a genetic programming (GP) algorithm to e...
3noThis work introduces a new technique for features construction in classification problems by mean...
The codebase for this paper is available at https://github.com/fieldsend/gecco_2015_mogpAn underlyin...
The study of semantics in Genetic Programming (GP) has increased dramatically over the last years du...
This paper explores the feasibility of applying genetic programming (GP) to multicategory pattern cl...
In this paper a multiclass classification problem solving technique based on genetic programming is ...
Tese de mestrado, Engenharia Informática (Interação e Conhecimento) Universidade de Lisboa, Faculdad...
4siGeneralization is an important issue in machine learning. In fact, in several applications good r...