To handle imbalanced datasets in machine learning or deep learning models, some studies suggest sampling techniques to generate virtual examples of minority classes to improve the models' prediction accuracy. However, for kernel-based support vector machines (SVM), some sampling methods suggest generating synthetic examples in an original data space rather than in a high-dimensional feature space. This may be ineffective in improving SVM classification for imbalanced datasets. To address this problem, we propose a novel hybrid sampling technique termed modified mega-trend-diffusion-extreme learning machine (MMTD-ELM) to effectively move the SVM decision boundary toward a region of the majority class. By this movement, the prediction of SVM ...
In medical datasets classification, support vector machine (SVM) is considered to be one of the most...
Medical datasets are usually imbalanced, where negative cases severely outnumber positive cases. The...
It is difficult for learning models to achieve high classification performances with imbalanced data...
Support Vector Machine (SVM) learning from imbalanced datasets, as well as most learning machines, c...
Abstract. Data in many biological problems are often compounded by imbalanced class distribution. Th...
A hybrid sampling technique is proposed by combining Complementary Fuzzy Support Vector Machine (CMT...
Support vector machines (SVMs) constitute one of the most popular and powerful classification method...
Data in many biological problems are often compounded by imbalanced class distribution. That is, the...
Traditional classification algorithms, in many times, perform poorly on imbalanced data sets in whic...
Support Vector Machine (SVM) learning from imbalanced datasets, as well as most learning machines, c...
Support vector machine (SVM) is one of the most popular algorithms in machine learning and data mini...
[[abstract]]It is difficult for learning models to achieve high classification performances with imb...
During the process of knowledge discovery in data, imbalanced learning data often emerges and presen...
Multi-class imbalanced data classification in supervised learning is one of the most challenging res...
AbstractImbalanced data are defined as dataset condition with some class is larger than any class in...
In medical datasets classification, support vector machine (SVM) is considered to be one of the most...
Medical datasets are usually imbalanced, where negative cases severely outnumber positive cases. The...
It is difficult for learning models to achieve high classification performances with imbalanced data...
Support Vector Machine (SVM) learning from imbalanced datasets, as well as most learning machines, c...
Abstract. Data in many biological problems are often compounded by imbalanced class distribution. Th...
A hybrid sampling technique is proposed by combining Complementary Fuzzy Support Vector Machine (CMT...
Support vector machines (SVMs) constitute one of the most popular and powerful classification method...
Data in many biological problems are often compounded by imbalanced class distribution. That is, the...
Traditional classification algorithms, in many times, perform poorly on imbalanced data sets in whic...
Support Vector Machine (SVM) learning from imbalanced datasets, as well as most learning machines, c...
Support vector machine (SVM) is one of the most popular algorithms in machine learning and data mini...
[[abstract]]It is difficult for learning models to achieve high classification performances with imb...
During the process of knowledge discovery in data, imbalanced learning data often emerges and presen...
Multi-class imbalanced data classification in supervised learning is one of the most challenging res...
AbstractImbalanced data are defined as dataset condition with some class is larger than any class in...
In medical datasets classification, support vector machine (SVM) is considered to be one of the most...
Medical datasets are usually imbalanced, where negative cases severely outnumber positive cases. The...
It is difficult for learning models to achieve high classification performances with imbalanced data...