In real-world applications, it has been observed that class imbalance (significant differences in class prior probabilities) may produce an important deterioration of the classifier performance, in particular with patterns belonging to the less represented classes. One method to tackle this problem consists to resample the original training set, either by over-sampling the minority class and/or under-sampling the majority class. In this paper, we propose two ensemble models (using a modular neural network and the nearest neighbor rule) trained on datasets under-sampled with genetic algorithms. Experiments with real datasets demonstrate the effectiveness of the methodology here propose
Many real-life problems can be described as unbalanced, where the number of instances belonging to o...
There is an increasing interest in the application of Evolutionary Algorithms (EAs) to induce classi...
There is an increasing interest in application of Evolutionary Algo-rithms to induce classification ...
In real-world applications, it has been observed that class imbalance (significant differences in cl...
This paper presents two adaptive ensemble sampling approaches for imbalanced learning: one is the un...
In some practical classification problems in which the number of instances of a particular class is ...
Classification of datasets with imbalanced sample distributions has always been a challenge. In gene...
<div><p>Classification of datasets with imbalanced sample distributions has always been a challenge....
The proportion of instances belonging to each class in a data-set plays an important role in machine...
This work investigates the use of sampling methods in Genetic Programming (GP) to improve the classi...
The present paper studies the influence of two distinct factors on the performance of some resamplin...
Learning classifiers from imbalanced or skewed datasets is an important topic, aris- ing very often ...
Ensembles are often capable of greater prediction accuracy than any of their individual members. As ...
Classification of imbalanced datasets is a critical problem in numerous contexts. In these applicati...
Learning with imbalanced data is one of the recent challenges in machine learning. Various solutions...
Many real-life problems can be described as unbalanced, where the number of instances belonging to o...
There is an increasing interest in the application of Evolutionary Algorithms (EAs) to induce classi...
There is an increasing interest in application of Evolutionary Algo-rithms to induce classification ...
In real-world applications, it has been observed that class imbalance (significant differences in cl...
This paper presents two adaptive ensemble sampling approaches for imbalanced learning: one is the un...
In some practical classification problems in which the number of instances of a particular class is ...
Classification of datasets with imbalanced sample distributions has always been a challenge. In gene...
<div><p>Classification of datasets with imbalanced sample distributions has always been a challenge....
The proportion of instances belonging to each class in a data-set plays an important role in machine...
This work investigates the use of sampling methods in Genetic Programming (GP) to improve the classi...
The present paper studies the influence of two distinct factors on the performance of some resamplin...
Learning classifiers from imbalanced or skewed datasets is an important topic, aris- ing very often ...
Ensembles are often capable of greater prediction accuracy than any of their individual members. As ...
Classification of imbalanced datasets is a critical problem in numerous contexts. In these applicati...
Learning with imbalanced data is one of the recent challenges in machine learning. Various solutions...
Many real-life problems can be described as unbalanced, where the number of instances belonging to o...
There is an increasing interest in the application of Evolutionary Algorithms (EAs) to induce classi...
There is an increasing interest in application of Evolutionary Algo-rithms to induce classification ...