The quality of candidate solutions in evolutionary computation (EC) depend on multiple independent runs and a large number of them fail to guarantee optimal result. These runs consume more or less equal or sometimes higher amount of computational resources on par the runs that produce desirable results. This research work addresses these two issues (run quality, execution time), Run Prediction Model (RPM), in which undesirable quality evolutionary runs are identified to discontinue from their execution. An Ant Colony Optimization (ACO) based classifier that learns to discover a prediction model from the early generations of an EC run. We consider Grammatical Evolution (GE) as our EC technique to apply RPM that is evaluated on four symboli...
Genetic programming (GP), a relatively new evolutionary technique, is demonstrated in this study to ...
Symbolic regression, an application domain of genetic programming (GP), aims to find a function whos...
Traditionally, reducing complexity in Machine Learning promises benefits such as less overfitting. H...
The quality of candidate solutions in evolutionary computation (EC) depend on multiple independent r...
The quality of the evolved solutions of an evolutionary algorithm (EA) varies across different runs ...
In machine learning, reducing the complexity of a model can help to improve its computational effici...
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 ...
AbstractEvolutionary computation techniques have seen a considerable popularity as problem solving a...
Difficult problems are tasks which number of possible solutions increase exponentially or factoriall...
An open question within Genetic Programming (GP) is how to characterize problem difficulty. The goal...
One of the main open problems within Genetic Programming (GP) is to meaningfully characterize the di...
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...
CAFECS (Classification and Forecasting Evolutionary Computation System), a hybrid of genetic algorit...
Genetic programming (GP), a relatively new evolutionary technique, is demonstrated in this study to ...
Symbolic regression, an application domain of genetic programming (GP), aims to find a function whos...
Traditionally, reducing complexity in Machine Learning promises benefits such as less overfitting. H...
The quality of candidate solutions in evolutionary computation (EC) depend on multiple independent r...
The quality of the evolved solutions of an evolutionary algorithm (EA) varies across different runs ...
In machine learning, reducing the complexity of a model can help to improve its computational effici...
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 ...
AbstractEvolutionary computation techniques have seen a considerable popularity as problem solving a...
Difficult problems are tasks which number of possible solutions increase exponentially or factoriall...
An open question within Genetic Programming (GP) is how to characterize problem difficulty. The goal...
One of the main open problems within Genetic Programming (GP) is to meaningfully characterize the di...
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...
CAFECS (Classification and Forecasting Evolutionary Computation System), a hybrid of genetic algorit...
Genetic programming (GP), a relatively new evolutionary technique, is demonstrated in this study to ...
Symbolic regression, an application domain of genetic programming (GP), aims to find a function whos...
Traditionally, reducing complexity in Machine Learning promises benefits such as less overfitting. H...