In the classification process that contains class imbalance problems. In addition to the uneven distribution of instances which causes poor performance, overlapping problems also cause performance degradation. This paper proposes a method that combining feature selection and hybrid approach redefinition (HAR) Method in handling class imbalance and overlapping for multi-class imbalanced. HAR was a hybrid ensembles method in handling class imbalance problem. The main contribution of this work is to produce a new method that can overcome the problem of class imbalance and overlapping in the multi-class imbalance problem. This method must be able to give better results in terms of classifier performance and overlap degrees in multi-class proble...
Improving machine learning algorithms has been the interest of data scientists and researchers for t...
Improving machine learning algorithms has been the interest of data scientists and researchers for t...
Ensemble learning by combining several single classifiers or another ensemble classifier is one of t...
and accuracy of the classification. Noise must also be considered because it can reduce the performa...
The class imbalance problem in the multi-class dataset is more challenging to manage than the proble...
The purpose of this research is to develop a research framework to optimize the results of hybrid en...
Research on multi-class imbalance from a number of researchers faces obstacles in the form of poor d...
Problems of Class Imbalance in data classification have received attention from many researchers. It...
The dataset tends to have the possibility to experience imbalance as indicated by the presence of a ...
The multi-class imbalance problem has a higher level of complexity when compared to the binary class...
Data mining and machine learning techniques designed to solve classification problems require balanc...
The class imbalance problem is the main problem in classification. This issue arises because real-wo...
Class Imbalance problems often occur in the classification process, the existence of these problems ...
Among the problems raised in the data mining area, the class imbalance is a well-known issue that al...
Imbalance of the classes, characterized by a disproportional ratio of observations in each class, is...
Improving machine learning algorithms has been the interest of data scientists and researchers for t...
Improving machine learning algorithms has been the interest of data scientists and researchers for t...
Ensemble learning by combining several single classifiers or another ensemble classifier is one of t...
and accuracy of the classification. Noise must also be considered because it can reduce the performa...
The class imbalance problem in the multi-class dataset is more challenging to manage than the proble...
The purpose of this research is to develop a research framework to optimize the results of hybrid en...
Research on multi-class imbalance from a number of researchers faces obstacles in the form of poor d...
Problems of Class Imbalance in data classification have received attention from many researchers. It...
The dataset tends to have the possibility to experience imbalance as indicated by the presence of a ...
The multi-class imbalance problem has a higher level of complexity when compared to the binary class...
Data mining and machine learning techniques designed to solve classification problems require balanc...
The class imbalance problem is the main problem in classification. This issue arises because real-wo...
Class Imbalance problems often occur in the classification process, the existence of these problems ...
Among the problems raised in the data mining area, the class imbalance is a well-known issue that al...
Imbalance of the classes, characterized by a disproportional ratio of observations in each class, is...
Improving machine learning algorithms has been the interest of data scientists and researchers for t...
Improving machine learning algorithms has been the interest of data scientists and researchers for t...
Ensemble learning by combining several single classifiers or another ensemble classifier is one of t...