During the development of applied systems, an important problem that must be addressed is that of choosing the correct tools for a given domain or scenario. This general task has been addressed by the genetic programming (GP) community by attempting to determine the intrinsic difficulty that a problem poses for a GP search. This paper presents an approach to predict the performance of GP applied to data classification, one of the most common problems in computer science. The novelty of the proposal is to extract statistical descriptors and complexity descriptors of the problem data, and from these estimate the expected performance of a GP classifier. We derive two types of predictive models: linear regression models and symbolic regression ...
Abstract: Genetic Programming (GP) has been emerged as a promising approach to deal with classificat...
Model complexity has a close relationship with the generalization ability and the interpretability o...
A common problem when using complicated models for prediction and classification is that the complex...
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...
The estimation of problem difficulty is an open issue in genetic programming (GP). The goal of this ...
In the field of Genetic Programming (GP) a question exists that is difficult to solve; how can probl...
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...
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...
Genetic Programming (GP) is a branch of Genetic Algorithms (GA) that searches for the best operatio...
Classification is one of the most researchable ideas in machine learning and data mining. A wide ran...
This thesis introduces various machine learning algorithms which can be used in prediction tasks bas...
Symbolic regression, an application domain of genetic programming (GP), aims to find a function whos...
Abstract: Genetic Programming (GP) has been emerged as a promising approach to deal with classificat...
Model complexity has a close relationship with the generalization ability and the interpretability o...
A common problem when using complicated models for prediction and classification is that the complex...
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...
The estimation of problem difficulty is an open issue in genetic programming (GP). The goal of this ...
In the field of Genetic Programming (GP) a question exists that is difficult to solve; how can probl...
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...
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...
Genetic Programming (GP) is a branch of Genetic Algorithms (GA) that searches for the best operatio...
Classification is one of the most researchable ideas in machine learning and data mining. A wide ran...
This thesis introduces various machine learning algorithms which can be used in prediction tasks bas...
Symbolic regression, an application domain of genetic programming (GP), aims to find a function whos...
Abstract: Genetic Programming (GP) has been emerged as a promising approach to deal with classificat...
Model complexity has a close relationship with the generalization ability and the interpretability o...
A common problem when using complicated models for prediction and classification is that the complex...