The estimation of problem difficulty is an open issue in genetic programming (GP). The goal of this work is to generate models that predict the expected performance of a GP-based classifier when it is applied to an unseen task. Classification problems are described using domain-specific features, some of which are proposed in this work, and these features are given as input to the predictive models. These models are referred to as predictors of expected performance. We extend this approach by using an ensemble of specialized predictors (SPEP), dividing classification problems into groups and choosing the corresponding SPEP. The proposed predictors are trained using 2D synthetic classification problems with balanced datasets. The models are ...
International audienceRecent research advances on Tangled Program Graphs (TPGs) have demonstrated th...
Genetic disorders are the result of mutation in the deoxyribonucleic acid (DNA) sequence which can b...
In classification,machine learning algorithms can suffer a performance bias when data sets are unbal...
The estimation of problem difficulty is an open issue in genetic programming (GP). The goal of this ...
The study of problem difficulty is an open issue in Genetic Programming (GP). Thegoal of this work i...
The estimation of problem difficulty is an open issue in Genetic Programming(GP). The goal of this w...
During the development of applied systems, an important problem that must be addressed is that of ch...
During the development of applied systems, an important problem that must be addressed is that of ch...
In the field of Genetic Programming (GP) a question exists that is difficult to solve; how can probl...
One of the main open problems within Genetic Programming (GP) is to meaningfully characterize the di...
An open question within Genetic Programming (GP) is how to characterize problem difficulty. The goal...
This thesis introduces various machine learning algorithms which can be used in prediction tasks bas...
The quality of the evolved solutions of an evolutionary algorithm (EA) varies across different runs ...
La estimación de la dificultad de problemas es un tema abierto en Programación Genética (GP). El obj...
Genetic Programming (GP) is a branch of Genetic Algorithms (GA) that searches for the best operatio...
International audienceRecent research advances on Tangled Program Graphs (TPGs) have demonstrated th...
Genetic disorders are the result of mutation in the deoxyribonucleic acid (DNA) sequence which can b...
In classification,machine learning algorithms can suffer a performance bias when data sets are unbal...
The estimation of problem difficulty is an open issue in genetic programming (GP). The goal of this ...
The study of problem difficulty is an open issue in Genetic Programming (GP). Thegoal of this work i...
The estimation of problem difficulty is an open issue in Genetic Programming(GP). The goal of this w...
During the development of applied systems, an important problem that must be addressed is that of ch...
During the development of applied systems, an important problem that must be addressed is that of ch...
In the field of Genetic Programming (GP) a question exists that is difficult to solve; how can probl...
One of the main open problems within Genetic Programming (GP) is to meaningfully characterize the di...
An open question within Genetic Programming (GP) is how to characterize problem difficulty. The goal...
This thesis introduces various machine learning algorithms which can be used in prediction tasks bas...
The quality of the evolved solutions of an evolutionary algorithm (EA) varies across different runs ...
La estimación de la dificultad de problemas es un tema abierto en Programación Genética (GP). El obj...
Genetic Programming (GP) is a branch of Genetic Algorithms (GA) that searches for the best operatio...
International audienceRecent research advances on Tangled Program Graphs (TPGs) have demonstrated th...
Genetic disorders are the result of mutation in the deoxyribonucleic acid (DNA) sequence which can b...
In classification,machine learning algorithms can suffer a performance bias when data sets are unbal...