Data sets with imbalanced class distribution pose serious challenges to well-established classifiers. In this work, we propose a stochastic multi-objective genetic programming based on semantics. We tested this approach on imbalanced binary classification data sets, where the proposed approach is able to achieve, in some cases, higher recall, precision and F-measure values on the minority class compared to C4.5, Naive Bayes and Support Vector Machine, without significantly decreasing these values on the majority class
peer-reviewedIn Machine Learning classification tasks, the class imbalance problem is an important o...
International audienceResearch on semantics in Genetic Programming (GP) has increased dramatically o...
Abstract — Classification in imbalanced domains is an important problem in Data Mining. We refer to ...
Data sets with imbalanced class distribution pose serious challenges to well-established classifier...
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...
The study of semantics in Genetic Programming (GP) has increased dramatically over the last years du...
Class imbalance and high dimensionality have been acknowledged as two tough issues in classification...
Semantics has become a key topic of research in Genetic Programming (GP). Semantics refers to the ou...
In supervised learning, class imbalanced data set is a state where the class distribution is not un...
International audienceRecent research advances on Tangled Program Graphs (TPGs) have demonstrated th...
In some practical classification problems in which the number of instances of a particular class is ...
This work investigates the use of sampling methods in Genetic Programming (GP) to improve the classi...
3noThis work introduces a new technique for features construction in classification problems by mean...
Abstract: Prediction of rarely occurring patterns is challenging but crucial for several real-world...
peer-reviewedIn Machine Learning classification tasks, the class imbalance problem is an important o...
International audienceResearch on semantics in Genetic Programming (GP) has increased dramatically o...
Abstract — Classification in imbalanced domains is an important problem in Data Mining. We refer to ...
Data sets with imbalanced class distribution pose serious challenges to well-established classifier...
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...
The study of semantics in Genetic Programming (GP) has increased dramatically over the last years du...
Class imbalance and high dimensionality have been acknowledged as two tough issues in classification...
Semantics has become a key topic of research in Genetic Programming (GP). Semantics refers to the ou...
In supervised learning, class imbalanced data set is a state where the class distribution is not un...
International audienceRecent research advances on Tangled Program Graphs (TPGs) have demonstrated th...
In some practical classification problems in which the number of instances of a particular class is ...
This work investigates the use of sampling methods in Genetic Programming (GP) to improve the classi...
3noThis work introduces a new technique for features construction in classification problems by mean...
Abstract: Prediction of rarely occurring patterns is challenging but crucial for several real-world...
peer-reviewedIn Machine Learning classification tasks, the class imbalance problem is an important o...
International audienceResearch on semantics in Genetic Programming (GP) has increased dramatically o...
Abstract — Classification in imbalanced domains is an important problem in Data Mining. We refer to ...