We propose and motivate the use of vicinal-risk minimization (VRM) for training genetic programming classifiers. We demonstrate that VRM has a number of attractive properties and demonstrate that it has a better correlation with generalization error compared to empirical risk minimization (ERM) so is more likely to lead to better generalization performance, in general. From the results of statistical tests over a range of real and synthetic datasets, we further demonstrate that VRM yields consistently superior generalization errors compared to conventional ERM
The ability to generalize beyond the training set is important for Genetic Programming (GP). Interle...
This work investigates the use of sampling methods in Genetic Programming (GP) to improve the classi...
peer-reviewedThere have been many studies undertaken to determine the efficacy of parameters and al...
© 1997-2012 IEEE. In this paper, we propose the use of Tikhonov regularization in conjunction with n...
We propose the use of Vapnik's vicinal risk minimization (VRM) for training decision trees to approx...
Fitness functions based on test cases are very common in Genetic Programming (GP). This process can ...
International audienceThis paper proposes a theoretical analysis of Genetic Programming (GP) from th...
In classification,machine learning algorithms can suffer a performance bias when data sets are unbal...
In classification,machine learning algorithms can suffer a performance bias when data sets are unbal...
Genetic Algorithms are bio-inspired metaheuristics that solve optimization problems; they are evolut...
Under review at IEEE Transactions on Evolutionary ComputationGenetic programming (GP) is a common me...
4siGeneralization is an important issue in machine learning. In fact, in several applications good r...
Abstract. This paper proposes a theoretical analysis of Genetic Pro-gramming (GP) from the perspecti...
A novel method of using Machine Learning (ML) algorithms to improve the performance of Linear Geneti...
The Vicinal Risk Minimization principle establishes a bridge between generative models and methods d...
The ability to generalize beyond the training set is important for Genetic Programming (GP). Interle...
This work investigates the use of sampling methods in Genetic Programming (GP) to improve the classi...
peer-reviewedThere have been many studies undertaken to determine the efficacy of parameters and al...
© 1997-2012 IEEE. In this paper, we propose the use of Tikhonov regularization in conjunction with n...
We propose the use of Vapnik's vicinal risk minimization (VRM) for training decision trees to approx...
Fitness functions based on test cases are very common in Genetic Programming (GP). This process can ...
International audienceThis paper proposes a theoretical analysis of Genetic Programming (GP) from th...
In classification,machine learning algorithms can suffer a performance bias when data sets are unbal...
In classification,machine learning algorithms can suffer a performance bias when data sets are unbal...
Genetic Algorithms are bio-inspired metaheuristics that solve optimization problems; they are evolut...
Under review at IEEE Transactions on Evolutionary ComputationGenetic programming (GP) is a common me...
4siGeneralization is an important issue in machine learning. In fact, in several applications good r...
Abstract. This paper proposes a theoretical analysis of Genetic Pro-gramming (GP) from the perspecti...
A novel method of using Machine Learning (ML) algorithms to improve the performance of Linear Geneti...
The Vicinal Risk Minimization principle establishes a bridge between generative models and methods d...
The ability to generalize beyond the training set is important for Genetic Programming (GP). Interle...
This work investigates the use of sampling methods in Genetic Programming (GP) to improve the classi...
peer-reviewedThere have been many studies undertaken to determine the efficacy of parameters and al...