Many real world applications inevitably contain datasets that have multiclass structure characterized by imbalance classes, redundant and irrelevant features that degrade performance of classifiers. Minority classes in the datasets are treated as outliers’ classes. The research aimed at establishing the role of ensemble technique in improving performance of multiclass classification. Multiclass datasets were transformed to binary and the datasets resampled using Synthetic minority oversampling technique (SMOTE) algorithm. Relevant features of the datasets were selected by use of an ensemble filter method developed using Correlation, Information Gain, Gain-Ratio and ReliefF filter selection methods. Adaboost and Random subspace learning alg...
Traditional classification algorithms often fail in learning from highly imbalanced datasets becaus...
Abstract. Many real world data mining applications involve learning from imbalanced data sets, where...
Ensemble learning by combining several single classifiers or another ensemble classifier is one of t...
Real life world datasets exhibit a multiclass classification structure characterized by imbalance cl...
Multiclass problem has continued to be an active research area due to the challenges paused by the i...
An ensemble classifier called DECIML has previously reported that the classifier is able to perform ...
Abstract — Many real-world applications have problems when learning from imbalanced data sets, such ...
Correct classification of rare samples is a vital data mining task and of paramount importance in ma...
The aim of this paper is to investigate the effects of combining various sampling and ensemble class...
This paper introduces two statistical outlier detection approaches by classes. Experiments on binar...
Imbalance of the classes, characterized by a disproportional ratio of observations in each class, is...
The data size is increasing dramatically every day, therefore, it has emerged the need of detecting ...
Improving machine learning algorithms has been the interest of data scientists and researchers for t...
Many real-life problems can be described as unbalanced, where the number of instances belonging to o...
Researchers have shown that although traditional direct classifier algorithm can be easily applied t...
Traditional classification algorithms often fail in learning from highly imbalanced datasets becaus...
Abstract. Many real world data mining applications involve learning from imbalanced data sets, where...
Ensemble learning by combining several single classifiers or another ensemble classifier is one of t...
Real life world datasets exhibit a multiclass classification structure characterized by imbalance cl...
Multiclass problem has continued to be an active research area due to the challenges paused by the i...
An ensemble classifier called DECIML has previously reported that the classifier is able to perform ...
Abstract — Many real-world applications have problems when learning from imbalanced data sets, such ...
Correct classification of rare samples is a vital data mining task and of paramount importance in ma...
The aim of this paper is to investigate the effects of combining various sampling and ensemble class...
This paper introduces two statistical outlier detection approaches by classes. Experiments on binar...
Imbalance of the classes, characterized by a disproportional ratio of observations in each class, is...
The data size is increasing dramatically every day, therefore, it has emerged the need of detecting ...
Improving machine learning algorithms has been the interest of data scientists and researchers for t...
Many real-life problems can be described as unbalanced, where the number of instances belonging to o...
Researchers have shown that although traditional direct classifier algorithm can be easily applied t...
Traditional classification algorithms often fail in learning from highly imbalanced datasets becaus...
Abstract. Many real world data mining applications involve learning from imbalanced data sets, where...
Ensemble learning by combining several single classifiers or another ensemble classifier is one of t...