In the paper 'Improved Overlap-Based Undersampling for Imbalanced Dataset Classification with Application to Epilepsy and Parkinson's Disease', the authors introduced two new methods that address the class overlap problem in imbalanced datasets. The methods involve identification and removal of potentially overlapped majority class instances. Extensive evaluations were carried out using 136 datasets and compared against several state-of-the-art methods. Results showed competitive performance with those methods, and statistical tests proved significant improvement in classification results. The discussion on the paper related to the behavioral analysis of class overlap and method validation was raised by Fernández. In this article, the respo...
Many practical classification problems are imbalanced; i.e., at least one of the classes constitutes ...
Today, the surge in data has also increased the complexity of class imbalance problem. Real-world sc...
Imbalanced datasets are a well-known problem in data mining, where the datasets are composed of two ...
Classification of imbalanced datasets has attracted substantial research interest over the past deca...
Early diagnosis of some life-threatening diseases such as cancers and heart is crucial for effective...
Class imbalance, as a phenomenon of asymmetry, has an adverse effect on the performance of most mach...
Class imbalanced datasets are common across different domains including health, security, banking an...
In many application domains such as medicine, information retrieval, cybersecurity, social media, et...
[[abstract]]It is difficult for learning models to achieve high classification performance with imba...
Class overlap and class imbalance are two data complexities that challenge the design of effective c...
Abstract—The class imbalance problem is a well-known classi-fication challenge in machine learning t...
A Dataset is unbalanced when the class of interest (minority class) is much smaller or rarer than no...
Many classification problems must deal with imbalanced datasets where one class \u2013 the majority ...
Class overlapping has long been re-garded as one of the toughest perva-sive problems in classificati...
Imbalanced class distribution in the medical dataset is a challenging task that hinders classifying ...
Many practical classification problems are imbalanced; i.e., at least one of the classes constitutes ...
Today, the surge in data has also increased the complexity of class imbalance problem. Real-world sc...
Imbalanced datasets are a well-known problem in data mining, where the datasets are composed of two ...
Classification of imbalanced datasets has attracted substantial research interest over the past deca...
Early diagnosis of some life-threatening diseases such as cancers and heart is crucial for effective...
Class imbalance, as a phenomenon of asymmetry, has an adverse effect on the performance of most mach...
Class imbalanced datasets are common across different domains including health, security, banking an...
In many application domains such as medicine, information retrieval, cybersecurity, social media, et...
[[abstract]]It is difficult for learning models to achieve high classification performance with imba...
Class overlap and class imbalance are two data complexities that challenge the design of effective c...
Abstract—The class imbalance problem is a well-known classi-fication challenge in machine learning t...
A Dataset is unbalanced when the class of interest (minority class) is much smaller or rarer than no...
Many classification problems must deal with imbalanced datasets where one class \u2013 the majority ...
Class overlapping has long been re-garded as one of the toughest perva-sive problems in classificati...
Imbalanced class distribution in the medical dataset is a challenging task that hinders classifying ...
Many practical classification problems are imbalanced; i.e., at least one of the classes constitutes ...
Today, the surge in data has also increased the complexity of class imbalance problem. Real-world sc...
Imbalanced datasets are a well-known problem in data mining, where the datasets are composed of two ...