Given imbalanced data, it is hard to train a good classifier using deep learning because of the poor generalization of minority classes. Traditionally, the well-known synthetic minority oversampling technique (SMOTE) for data augmentation, a data mining approach for imbalanced learning, has been used to improve this generalization. However, it is unclear whether SMOTE also benefits deep learning. In this work, we study why the original SMOTE is insufficient for deep learning, and enhance SMOTE using soft labels. Connecting the resulting soft SMOTE with Mixup, a modern data augmentation technique, leads to a unified framework that puts traditional and modern data augmentation techniques under the same umbrella. A careful study within this fr...
Classification of datasets is one of the major issues encountered by the data mining community. This...
Imbalanced data presents many difficulties, as the majority of learners will be prejudice against th...
Imbalanced data sets in real-world applications have a majority class with normal instances and a mi...
The Synthetic Minority Oversampling Technique (SMOTE) preprocessing algorithm is considered \de fac...
Work on machine learning, especially deep learning, really depends on the quality of data. Data imba...
Abstract. Many real world data mining applications involve learning from imbalanced data sets. Learn...
Imbalanced Data (ID) is a problem that deters Machine Learning (ML) models from achieving satisfacto...
Class imbalance in a dataset is a major problem for classifiers that results in poor prediction with...
Douzas, G., Bação, F., & Last, F. (2018). Improving imbalanced learning through a heuristic oversamp...
One of the problems that are often faced by classifier algorithms is related to the problem of imbal...
In the data mining, a class imbalance is a problematic issue to look for the solutions. It probably ...
In this paper, we propose a discriminative variational autoencoder (DVAE) to assist deep learning fr...
In class-imbalance learning, Synthetic Minority Oversampling Technique (SMOTE) is a widely used tech...
© International Association of Engineers. Mining imbalanced data, which is also known as a class im...
Many traditional approaches to pattern classifi- cation assume that the problem classes share simila...
Classification of datasets is one of the major issues encountered by the data mining community. This...
Imbalanced data presents many difficulties, as the majority of learners will be prejudice against th...
Imbalanced data sets in real-world applications have a majority class with normal instances and a mi...
The Synthetic Minority Oversampling Technique (SMOTE) preprocessing algorithm is considered \de fac...
Work on machine learning, especially deep learning, really depends on the quality of data. Data imba...
Abstract. Many real world data mining applications involve learning from imbalanced data sets. Learn...
Imbalanced Data (ID) is a problem that deters Machine Learning (ML) models from achieving satisfacto...
Class imbalance in a dataset is a major problem for classifiers that results in poor prediction with...
Douzas, G., Bação, F., & Last, F. (2018). Improving imbalanced learning through a heuristic oversamp...
One of the problems that are often faced by classifier algorithms is related to the problem of imbal...
In the data mining, a class imbalance is a problematic issue to look for the solutions. It probably ...
In this paper, we propose a discriminative variational autoencoder (DVAE) to assist deep learning fr...
In class-imbalance learning, Synthetic Minority Oversampling Technique (SMOTE) is a widely used tech...
© International Association of Engineers. Mining imbalanced data, which is also known as a class im...
Many traditional approaches to pattern classifi- cation assume that the problem classes share simila...
Classification of datasets is one of the major issues encountered by the data mining community. This...
Imbalanced data presents many difficulties, as the majority of learners will be prejudice against th...
Imbalanced data sets in real-world applications have a majority class with normal instances and a mi...